Contents 1 Functions 1.1 The Concept of a Function . . . . . . . . . . . . . . 1.2 Trigonometric Functions . . . . . . . . . . . . . . . 1.3 Inverse Trigonometric Functions . . . . . . . . . . . 1.4 Logarithmic, Exponential and Hyperbolic Functions 2 Limits and Continuity 2.1 Intuitive treatment and definitions . . 2.1.1 Introductory Examples . . . . . 2.1.2 Limit: Formal Definitions . . . 2.1.3 Continuity: Formal Definitions 2.1.4 Continuity Examples . . . . . . 2.2 Linear Function Approximations . . . . 2.3 Limits and Sequences . . . . . . . . . . 2.4 Properties of Continuous Functions . . 2.5 Limits and Infinity . . . . . . . . . . . 3 Differentiation 3.1 The Derivative . . . . . . . . . . . 3.2 The Chain Rule . . . . . . . . . . . 3.3 Differentiation of Inverse Functions 3.4 Implicit Differentiation . . . . . . . 3.5 Higher Order Derivatives . . . . . .
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2 2 12 19 26
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35 35 35 41 43 48 61 72 84 94
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99 99 111 118 130 137
4 Applications of Differentiation 146 4.1 Mathematical Applications . . . . . . . . . . . . . . . . . . . . 146 4.2 Antidifferentiation . . . . . . . . . . . . . . . . . . . . . . . . 157 4.3 Linear First Order Differential Equations . . . . . . . . . . . . 164 i
ii
CONTENTS 4.4 4.5
5 The 5.1 5.2 5.3 5.4 5.5 5.6 5.7 5.8
Linear Second Order Homogeneous Differential Equations . . . 169 Linear Non-Homogeneous Second Order Differential Equations 179 Definite Integral Area Approximation . . . . . . . . . . . The Definite Integral . . . . . . . . . . . Integration by Substitution . . . . . . . . Integration by Parts . . . . . . . . . . . Logarithmic, Exponential and Hyperbolic The Riemann Integral . . . . . . . . . . Volumes of Revolution . . . . . . . . . . Arc Length and Surface Area . . . . . .
6 Techniques of Integration 6.1 Integration by formulae . . . . . 6.2 Integration by Substitution . . . 6.3 Integration by Parts . . . . . . 6.4 Trigonometric Integrals . . . . . 6.5 Trigonometric Substitutions . . 6.6 Integration by Partial Fractions 6.7 Fractional Power Substitutions . 6.8 Tangent x/2 Substitution . . . 6.9 Numerical Integration . . . . .
. . . . . . . . . . . . . . . . . . . . . . . . Functions . . . . . . . . . . . . . . . . . .
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183 183 192 210 216 230 242 250 260
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267 . 267 . 273 . 276 . 280 . 282 . 288 . 289 . 290 . 291
7 Improper Integrals and Indeterminate Forms 7.1 Integrals over Unbounded Intervals . . . . . . 7.2 Discontinuities at End Points . . . . . . . . . 7.3 . . . . . . . . . . . . . . . . . . . . . . . . . 7.4 Improper Integrals . . . . . . . . . . . . . . .
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315 . 315 . 320 . 323 . 327 . 341 . 347 . 354
8 Infinite Series 8.1 Sequences . . . . . . . . . . . 8.2 Monotone Sequences . . . . . 8.3 Infinite Series . . . . . . . . . 8.4 Series with Positive Terms . . 8.5 Alternating Series . . . . . . . 8.6 Power Series . . . . . . . . . . 8.7 Taylor Polynomials and Series
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294 294 299 304 314
CONTENTS 8.8
1
Applications . . . . . . . . . . . . . . . . . . . . . . . . . . . . 360
9 Analytic Geometry and Polar 9.1 Parabola . . . . . . . . . . . 9.2 Ellipse . . . . . . . . . . . . 9.3 Hyperbola . . . . . . . . . . 9.4 Second-Degree Equations . . 9.5 Polar Coordinates . . . . . . 9.6 Graphs in Polar Coordinates 9.7 Areas in Polar Coordinates . 9.8 Parametric Equations . . . .
Coordinates . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . .
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361 . 361 . 362 . 363 . 363 . 364 . 365 . 366 . 366
Chapter 1 Functions In this chapter we review the basic concepts of functions, polynomial functions, rational functions, trigonometric functions, logarithmic functions, exponential functions, hyperbolic functions, algebra of functions, composition of functions and inverses of functions.
1.1
The Concept of a Function
Basically, a function f relates each element x of a set, say Df , with exactly one element y of another set, say Rf . We say that Df is the domain of f and Rf is the range of f and express the relationship by the equation y = f (x). It is customary to say that the symbol x is an independent variable and the symbol y is the dependent variable. Example 1.1.1 Let Df = {a, b, c}, Rf = {1, 2, 3} and f (a) = 1, f (b) = 2 and f (c) = 3. Sketch the graph of f .
graph
Example 1.1.2 Sketch the graph of f (x) = |x|. Let Df be the set of all real numbers and Rf be the set of all non-negative real numbers. For each x in Df , let y = |x| in Rf . In this case, f (x) = |x|, 2
1.1. THE CONCEPT OF A FUNCTION
3
the absolute value of x. Recall that x if x ≥ 0 |x| = −x if x < 0 We note that f (0) = 0, f (1) = 1 and f (−1) = 1. If the domain Df and the range Rf of a function f are both subsets of the set of all real numbers, then the graph of f is the set of all ordered pairs (x, f (x)) such that x is in Df . This graph may be sketched in the xycoordinate plane, using y = f (x). The graph of the absolute value function in Example 2 is sketched as follows:
graph
Example 1.1.3 Sketch the graph of f (x) =
√
x − 4.
In order that the range of f contain real numbers only, we must impose the restriction that x ≥ 4. Thus, the domain Df contains the set of all real numbers x such that x ≥ 4. The range Rf will consist of all real numbers y such that y ≥ 0. The graph of f is sketched below.
graph
Example 1.1.4 A useful function in engineering is the unit step function, u, defined as follows: 0 if x < 0 u(x) = 1 if x ≥ 0 The graph of u(x) has an upward jump at x = 0. Its graph is given below.
4
CHAPTER 1. FUNCTIONS graph
Example 1.1.5 Sketch the graph of f (x) =
x2
x . −4
It is clear that Df consists of all real numbers x 6= ±2. The graph of f is given below.
graph
We observe several things about the graph of this function. First of all, the graph has three distinct pieces, separated by the dotted vertical lines x = −2 and x = 2. These vertical lines, x = ±2, are called the vertical asymptotes. Secondly, for large positive and negative values of x, f (x) tends to zero. For this reason, the x-axis, with equation y = 0, is called a horizontal asymptote. Let f be a function whose domain Df and range Rf are sets of real numbers. Then f is said to be even if f (x) = f (−x) for all x in Df . And f is said to be odd if f (−x) = −f (x) for all x in Df . Also, f is said to be one-to-one if f (x1 ) = f (x2 ) implies that x1 = x2 . Example 1.1.6 Sketch the graph of f (x) = x4 − x2 . This function f is even because for all x we have f (−x) = (−x)4 − (−x)2 = x4 − x2 = f (x). The graph of f is symmetric to the y-axis because (x, f (x)) and (−x, f (x)) are on the graph for every x. The graph of an even function is always symmetric to the y-axis. The graph of f is given below.
graph
1.1. THE CONCEPT OF A FUNCTION
5
This function f is not one-to-one because f (−1) = f (1). Example 1.1.7 Sketch the graph of g(x) = x3 − 3x. The function g is an odd function because for each x, g(−x) = (−x)3 − 3(−x) = −x3 + 3x = −(x3 − 3x) = −g(x). The graph of this function g is symmetric to the origin because (x, g(x)) and (−x, −g(x)) are on the graph for all x. The graph of an odd function is always symmetric to the origin. The graph of g is given below.
graph √ √ This function g is not one-to-one because g(0) = g( 3) = g(− 3). It can be shown that every function f can be written as the sum of an even function and an odd function. Let 1 1 g(x) = (f (x) + f (−x)), h(x) = (f (x) − f (−x)). 2 2 Then, 1 g(−x) = (f (−x) + f (x)) = g(x) 2 1 h(−x) = (f (−x) − f (x)) = −h(x). 2 Furthermore f (x) = g(x) + h(x). Example 1.1.8 Express f as the sum of an even function and an odd function, where, f (x) = x4 − 2x3 + x2 − 5x + 7. We define 1 g(x) = (f (x) + f (−x)) 2 1 = {(x4 − 2x3 + x2 − 5x + 7) + (x4 + 2x3 + x2 + 5x + 7)} 2 = x4 + x2 + 7
6
CHAPTER 1. FUNCTIONS
and 1 h(x) = (f (x) − f (−x)) 2 1 = {(x4 − 2x3 + x2 − 5x + 7) − (x4 + 2x3 + x2 + 5x + 7)} 2 = −2x3 − 5x. Then clearly g(x) is even and h(x) is odd. g(−x) = (−x)4 + (−x)2 + 7 = x4 + x2 + 7 = g(x) h(−x) = − 2(−x)3 − 5(−x) = 2x3 + 5x = −h(x). We note that g(x) + h(x) = (x4 + x2 + 7) + (−2x3 − 5x) = x4 − 2x3 + x2 − 5x + 7 = f (x). It is not always easy to tell whether a function is one-to-one. The graphical test is that if no horizontal line crosses the graph of f more than once, then f is one-to-one. To show that f is one-to-one mathematically, we need to show that f (x1 ) = f (x2 ) implies x1 = x2 . Example 1.1.9 Show that f (x) = x3 is a one-to-one function. Suppose that f (x1 ) = f (x2 ). Then 0 = x31 − x32 = (x1 − x2 )(x21 + x1 x2 + x22 )
(By factoring)
If x1 6= x2 , then x21 + x1 x2 + x22 = 0 and p −x2 ± x22 − 4x22 x1 = 2
=
−x2 ±
p −3x22 . 2
1.1. THE CONCEPT OF A FUNCTION
7
This is only possible if x1 is not a real number. This contradiction proves that f (x1 ) 6= f (x2 ) if x1 = 6 x2 and, hence, f is one-to-one. The graph of f is given below.
graph
If a function f with domain Df and range Rf is one-to-one, then f has a unique inverse function g with domain Rf and range Df such that for each x in Df , g(f (x)) = x and for such y in Rf , f (g(y)) = y. This function g is also written as f −1 . It is not always easy to express g explicitly but the following algorithm helps in computing g. Step 1 Solve the equation y = f (x) for x in terms of y and make sure that there exists exactly one solution for x. Step 2 Write x = g(y), where g(y) is the unique solution obtained in Step 1. Step 3 If it is desirable to have x represent the independent variable and y represent the dependent variable, then exchange x and y in Step 2 and write y = g(x). Remark 1 If y = f (x) and y = g(x) = f −1 (x) are graphed on the same coordinate axes, then the graph of y = g(x) is a mirror image of the graph of y = f (x) through the line y = x. Example 1.1.10 Determine the inverse of f (x) = x3 . We already know from Example 9 that f is one-to-one and, hence, it has a unique inverse. We use the above algorithm to compute g = f −1 . Step 1 We solve y = x3 for x and get x = y 1/3 , which is the unique solution.
8
CHAPTER 1. FUNCTIONS
Step 2 Then g(y) = y 1/3 and g(x) = x1/3 = f −1 (x). Step 3 We plot y = x3 and y = x1/3 on the same coordinate axis and compare their graphs.
graph
A polynomial function p of degree n has the general form p(x) = a0 xn + a1 xn−1 + · · · + an−1 x + an , a2 6= 0. The polynomial functions are some of the simplest functions to compute. For this reason, in calculus we approximate other functions with polynomial functions. A rational function r has the form r(x) =
p(x) q(x)
where p(x) and q(x) are polynomial functions. We will assume that p(x) and q(x) have no common non-constant factors. Then the domain of r(x) is the set of all real numbers x such that q(x) 6= 0. Exercises 1.1 1. Define each of the following in your own words. (a) f is a function with domain Df and range Rf (b) f is an even function (c) f is an odd function (d) The graph of f is symmetric to the y-axis (e) The graph of f is symmetric to the origin. (f) The function f is one-to-one and has inverse g.
1.1. THE CONCEPT OF A FUNCTION
9
2. Determine the domains of the following functions (a) f (x) =
|x| x
(b) f (x) =
x2 x3 − 27
(c) f (x) =
√ x2 − 9
(d) f (x) =
x2 − 1 x−1
3. Sketch the graphs of the following functions and determine whether they are even, odd or one-to-one. If they are one-to-one, compute their inverses and plot their inverses on the same set of axes as the functions. (a) f (x) = x2 − 1 (c) h(x) =
√ 9 − x, x ≥ 9
(b) g(x) = x3 − 1 (d) k(x) = x2/3
4. If {(x1 , y1 ), (x2 , y2 ), . . . , (xn+1 , yn+1 )} is a list of discrete data points in the plane, then there exists a unique nth degree polynomial that goes through all of them. Joseph Lagrange found a simple way to express this polynomial, called the Lagrange polynomial. x − x1 x − x2 + y2 For n = 2, P2 (x) = y1 x1 − x2 x2 − x1 For n = 3, P3 (x) = y1 y3
(x − x1 )(x − x2 ) (x3 − x1 )(x3 − x2 )
P4 (x) =y1
y3
(x − x2 )(x − x3 ) (x − x1 )(x − x3 ) + y2 + (x1 − x2 )(x1 − x3 ) (x2 − x1 )(x2 − x3 )
(x − x2 )(x − x3 )(x − x4 ) (x − x1 )(x − x3 )(x − x4 ) + y2 + (x1 − x2 )(x1 − x3 )(x1 − x4 ) (x2 − x1 )(x2 − x3 )(x2 − x4 ) (x − x1 )(x − x2 )(x − x4 ) (x − x1 )(x − x2 )(x − x3 ) + y4 (x3 − x1 )(x3 − x2 )(x3 − x4 ) (x4 − x1 )(x4 − x2 )(x4 − x3 )
Consider the data {(−2, 1), (−1, −2), (0, 0), (1, 1), (2, 3)}. Compute P2 (x), P3 (x), and P4 (x); plot them and determine which data points they go through. What can you say about Pn (x)?
10
CHAPTER 1. FUNCTIONS
5. A linear function has the form y = mx + b. The number m is called the slope and the number b is called the y-intercept. The graph of this function goes through the point (0, b) on the y-axis. In each of the following determine the slope, y-intercept and sketch the graph of the given linear function: a) y = 3x − 5
b) y = −2x + 4
d) y = 4
e) 2y + 5x = 10
c) y = 4x − 3
6. A quadratic function has the form y = ax2 + bx + c, where a 6= 0. On completing the square, this function can be expressed in the form ) ( 2 2 b − 4ac b − . y=a x+ 2a 4a2 b b2 − 4ac The graph of this function is a parabola with vertex − , − 2a 4a −b and line of symmetry axis being the vertical line with equation x = . 2a The graph opens upward if a > 0 and downwards if a < 0. In each of the following quadratic functions, determine the vertex, symmetry axis and sketch the graph. a) y = 4x2 − 8
b) y = −4x2 + 16
c) y = x2 + 4x + 5
d) y = x2 − 6x + 8
e) y = −x2 + 2x + 5
f) y = 2x2 − 6x + 12
g) y = −2x2 − 6x + 5 h) y = −2x2 + 6x + 10
i) 3y + 6x2 + 10 = 0
j) y = −x2 + 4x + 6
l) y = 4x2 − 16x
k) y = −x2 + 4x
7. Sketch the graph of the linear function defined by each linear equation and determine the x-intercept and y-intercept if any. a) 3x − y = 3
b) 2x − y = 10
c) x = 4 − 2y
1.1. THE CONCEPT OF A FUNCTION
11
d) 4x − 3y = 12
e) 3x + 4y = 12
f) 4x + 6y = −12
g) 2x − 3y = 6
h) 2x + 3y = 12
i) 3x + 5y = 15
8. Sketch the graph of each of the following functions: a) y = 4|x|
b) y = −4|x|
c) y = 2|x| + |x − 1|
d) y = 3|x| + 2|x − 2| − 4|x + 3|
e) y = 2|x + 2| − 3|x + 1| 9. Sketch the graph of each of the following piecewise functions. ( 2 if x ≥ 0 a) y = −2 if x < 0
( x2 for x ≤ 0 b) y = 2x + 4 for x > 0
( 4x2 c) y = 3x3
( 3x2 d) y = 4
if x ≥ 0 x<0
for x ≤ 1 for x > 1
e) y = n − 1 for n − 1 ≤ x < n, for each integer n. f) y = n for n − 1 < x ≤ n for each integer n. 10. The reflection of the graph of y = f (x) is the graph of y = −f (x). In each of the following, sketch the graph of f and the graph of its reflection on the same axis. a) y = x3
b) y = x2
c) y = |x|
d) y = x3 − 4x
e) y = x2 − 2x
f) y = |x| + |x − 1|
h) y = 3x − 6
( x2 + 1 for x ≤ 0 i) y = x3 + 1 if x < 0
g) y = x4 − 4x2
12
CHAPTER 1. FUNCTIONS
11. The graph of y = f (x) is said to be (i) Symmetric with respect to the y-axis if (x, y) and (−x, y) are both on the graph of f ; (ii) Symmetric with respect to the origin if (x, y) and (−x, −y) are both on the graph of f . For the functions in problems 10 a) – 10 i), determine the functions whose graphs are (i) Symmetric with respect to y-axis or (ii) Symmetric with respect to the origin. 12. Discuss the symmetry of the graph of each function and determine whether the function is even, odd, or neither. a) f (x) = x6 + 1
b) f (x) = x4 − 3x2 + 4
c) f (x) = x3 − x2
d) f (x) = 2x3 + 3x
e) f (x) = (x − 1)3
f) f (x) = (x + 1)4
√ x2 + 4
h) f (x) = 4|x| + 2
i) f (x) = (x2 + 1)3
g) f (x) =
x2 − 1 j) f (x) = 2 x +1
1.2
k) f (x) =
√
4 − x2
l) f (x) = x1/3
Trigonometric Functions
The trigonometric functions are defined by the points (x, y) on the unit circle with the equation x2 + y 2 = 1.
graph
Consider the points A(0, 0), B(x, 0), C(x, y) where C(x, y) is a point on the unit circle. Let θ, read theta, represent the length of the arc joining the points D(1, 0) and C(x, y). This length is the radian measure of the angle CAB. Then we define the following six trigonometric functions of θ as
1.2. TRIGONOMETRIC FUNCTIONS
13
follows: y x y sin θ sin θ = , cos θ = , tan θ = = , 1 1 x cos θ csc θ =
1 1 1 1 x 1 = , sec θ = = , cot θ = = . y sin θ x cos θ y tan θ
Since each revolution of the circle has arc length 2π, sin θ and cos θ have period 2π. That is, sin(θ + 2nπ) = sin θ and cos(θ + 2nπ) = cos θ, n = 0, ±1, ±2, . . . The function values of some of the common arguments are given below: θ sin θ cos θ
0 π/6 √π/4 √π/3 π/2 √ 2π/3 3π/4 5π/6 π √ 0 √1/2 √2/2 3/2 1 3/2 1/2 0 √2/2 √ 1 3/2 2/2 1/2 0 −1/2 − 2/2 − 3/2 -1
θ sin θ cos θ
7π/6 5π/4 4π/3 3π/2 5π/3 7π/4 √ √ √ √ −1/2 − 2/2 − 3/2 −1 − 3/2 − √ √ √ 2/2 − 3/2 − 2/2 −1/2 0 1/2 2/2
11π/6 2π −1/2 0 √ 3/2 1
A function f is said to have period p if p is the smallest positive number such that, for all x, f (x + np) = f (x), n = 0, ±1, ±2, . . . . Since csc θ is the reciprocal of sin θ and sec θ is the reciprocal of cos(θ), their periods are also 2π. That is, csc(θ + 2nπ) = csc(θ) and sec(θ + 2nπ) = sec θ, n = 0, ±1, ±2, . . . . It turns out that tan θ and cot θ have period π. That is, tan(θ + nπ) = tan θ and cot(θ + nπ) = cot θ, n = 0, ±1, ±2, . . . . Geometrically, it is easy to see that cos θ and sec θ are the only even trigonometric functions. The functions sin θ, cos θ, tan θ and cot θ are all odd functions. The functions sin θ and cos θ are defined for all real numbers. The
14
CHAPTER 1. FUNCTIONS
functions csc θ and cot θ are not defined for integer multiples of π, and sec θ and tan θ are not defined for odd integer multiples of π/2. The graphs of the six trigonometric functions are sketched as follows:
graph
The dotted vertical lines represent the vertical asymptotes. There are many useful trigonometric identities and reduction formulas. For future reference, these are listed here.
sin2 θ + cos2 θ = 1 tan2 θ + 1 = sec2 θ 1 + cot2 θ = csc2 θ
sin2 θ = 1 − cos2 θ tan2 θ = sec2 θ − 1 cot2 θ = csc2 θ − 1
cos2 θ = 1 − sin2 θ sec2 θ − tan2 θ = 1 csc2 θ − cot2 θ = 1
sin 2θ = 2 sin θ cos θ
cos 2θ = 2 cos2 θ − 1
cos 2θ = 1 + 2 sin2 θ
cos(x + y) = cos x cos y − sin x sin y cos(x − y) = cos x cos y + sin x sin y
sin(x + y) = sin x cos y + cos x sin y, sin(x − y) = sin x cos y − cos x sin y, tan(x + y) =
tan x + tan y 1 − tan x tan y
sin α + sin β = 2 sin
sin α − sin β = 2 cos
cos α + cos β = 2 cos
α+β 2 α+β 2
cos α − cos β = −2 sin
tan(x − y) =
α+β 2
α+β 2
cos
α−β 2
sin
α−β 2
cos
sin
α−β 2
α−β 2
tan x − tan y 1 + tan x tan y
1.2. TRIGONOMETRIC FUNCTIONS
15
1 sin x cos y = (sin(x + y) + sin(x − y)) 2 1 cos x sin y = (sin(x + y) − sin(x − y)) 2 1 cos x cos y = (cos(x − y) + cos(x + y)) 2 1 sin x sin y = (cos(x − y) − cos(x + y)) 2 sin(π ± θ) = ∓ sin θ cos(π ± θ) = − cos θ tan(π ± θ) = ± tan θ cot(π ± θ) = ± cot θ sec(π ± θ) = − sec θ csc(π ± θ) = ∓ csc θ In applications of calculus to engineering problems, the graphs of y = A sin(bx + c) and y = A cos(bx + c) play a significant role. The first problem has to do with converting expressions of the form A sin bx + B cos bx to one of the above forms. Let us begin first with an example. Example 1.2.1 Express y = 3 sin(2x)−4 cos(2x) in the form y = A sin(2x± θ) or y = A cos(2x ± θ). First of all, we make a right triangle with sides of length 3 and 4 and compute the length of the hypotenuse, which is 5. We label one of the acute angles as θ and compute sin θ, cos θ and tan θ. In our case, sin θ =
graph
3 5
,
cos θ =
4 5
3 , and, tan θ = . 4
16
CHAPTER 1. FUNCTIONS Then, y = 3 sin 2x − 4 cos 2x 3 4 = 5 (sin(2x)) − (cos(2x)) 5 5 = 5[sin(2x) sin θ − cos(2x) cos θ] = −5[cos(2x) cos θ − sin(2x) sin θ] = −5[cos(2x + θ)]
Thus, the problem is reduced to sketching a cosine function, ??? y = −5 cos(2x + θ). We can compute the radian measure of θ from any of the equations 3 4 3 sin θ = , cos θ = or tan θ = . 5 5 4 Example 1.2.2 Sketch the graph of y = 5 cos(2x + 1). In order to sketch the graph, we first compute all of the zeros, relative maxima, and relative minima. We can see that the maximum values will be 5 and minimum values are −5. For this reason the number 5 is called the amplitude of the graph. We know that the cosine function has zeros at odd integer multiples of π/2. Let π 1 π 2xn + 1 = (2n + 1) , xn = (2n + 1) − , n = 0, ±1, ±2 . . . . 2 4 2 The max and min values of a cosine function occur halfway between the consecutive zeros. With this information, we are able to sketch the graph of 1 1 the given function. The period is π, phase shift is and frequency is . 2 π
graph
For the functions of the form y = A sin(ωt ± d) or y = A cos(ωt ± d) we make the following definitions:
1.2. TRIGONOMETRIC FUNCTIONS period =
17
2Ď&#x20AC; 1 Ď&#x2030; , frequency = = , Ď&#x2030; period 2Ď&#x20AC;
amplitude = |A|, and phase shift =
d . Ď&#x2030;
The motion of a particle that follows the curves A sin(Ď&#x2030;tÂąd) or A cos(Ď&#x2030;tÂąd) is called simple harmonic motion. Exercises 1.2 1. Determine the amplitude, frequency, period and phase shift for each of the following functions. Sketch their graphs. (a) y = 2 sin(3t â&#x2C6;&#x2019; 2) (c) y = 3 sin 2t + 4 cos 2t sin x (e) y = x
(b) y = â&#x2C6;&#x2019;2 cos(2t â&#x2C6;&#x2019; 1) (d) y = 4 sin 2t â&#x2C6;&#x2019; 3 cos 2t
2. Sketch the graphs of each of the following: (a) y = tan(3x) (d) y = sin(1/x)
(b) y = cot(5x) (c) y = x sin x (e) y = x sin(1/x)
3. Express the following products as the sum or difference of functions. (a) sin(3x) cos(5x) (b) cos(2x) cos(4x) (d) sin(3x) sin(5x) (e) sin(4x) cos(4x)
(c) cos(2x) sin(4x)
4. Express each of the following as a product of functions: (a) sin(x + h) â&#x2C6;&#x2019; sin x (b) cos(x + h) â&#x2C6;&#x2019; cos x (d) cos(4x) â&#x2C6;&#x2019; cos(2x) (e) sin(4x) + sin(2x)
(c) sin(5x) â&#x2C6;&#x2019; sin(3x) (f) cos(5x) + cos(3x)
Ď&#x20AC; â&#x2C6;&#x2019;Ď&#x20AC; â&#x2030;¤ x â&#x2030;¤ . Take the sample points 2 2 Ď&#x20AC; Ď&#x20AC; Ď&#x20AC; Ď&#x20AC; 1 Ď&#x20AC; , (0, 0), , , ,1 . â&#x2C6;&#x2019; , â&#x2C6;&#x2019;1 , â&#x2C6;&#x2019; , â&#x2C6;&#x2019; 2 6 2 6 2 2
5. Consider the graph of y = sin x,
18
CHAPTER 1. FUNCTIONS Compute the fourth degree Lagrange Polynomial that approximates and agrees with y = sin x at these data points. This polynomial has the form P5 (x) = y1 y2 + y5
(x − x2 )(x − x3 )(x − x4 )(x − x5 ) + (x1 − x2 )(x1 − x3 )(x1 − x4 )(x1 − x5 ) (x − x1 )(x − x3 )(x − x4 )(x − x5 ) + ··· (x2 − x1 )(x2 − x3 )(x2 − x4 )(x2 − x5 ) (x − x1 )(x − x2 )(x − x3 )(x − x4 ) . (x5 − x1 )(x5 − x2 )(x5 − x3 )(x5 − x4 )
6. Sketch the graphs of the following functions and compute the amplitude, period, frequency and phase shift, as applicable. a) y = 3 sin t
b) y = 4 cos t
c) y = 2 sin(3t)
d) y = −4 cos(2t)
e) y = −3 sin(4t)
f) y = 2 sin t +
h) y = 3 cos(2t + π)
i) y = −3 cos(2t − π)
k) y = −2 cos(6t − π)
l) y = 3 sin(6t + π)
g) y = −2 sin t −
π 6
j) y = 2 sin(4t + π)
π 6
7. Sketch the graphs of the following functions over two periods. a) y = 2 sec x
b) y = −3 tan x
c) y = 2 cot x
d) y = 3 csc x
e) y = tan(πx)
f) y = tan 2x +
g) y = 2 cot 3x +
π 2
h) y = 3 sec 2x +
π 3
π 3
i) y = 2 sin πx +
π 6
8. Prove each of the following identities: a) cos 3t = 3 cos t + 4 cos3 t
b) sin(3t) = 3 sin x − 4 sin3 x
c) sin t − cos t = − cos 2t
sin3 t − cos3 t d) = 1 + sin 2t sin t − cos t
e) cos 4t cos 7t − sin 7t sin 4t = cos 11t
f)
4
4
sin(x + y) tan x + tan y = sin(x − y) tan x − tan y
1.3. INVERSE TRIGONOMETRIC FUNCTIONS
19
9. If f (x) = cos x, prove that f (x + h) − f (x) = cos x h
cos h − 1 h
− sin x
sin h h
.
+ cos x
sin h h
.
10. If f (x) = sin x, prove that f (x + h) − f (x) = sin x h
cos h − 1 h
11. If f (x) = cos x, prove that f (x) − f (t) = cos t x−t
cos(x − t) − 1 x−t
− sin t
sin(x − t) x−t
.
+ cos t
sin(x − t) x−t
.
12. If f (x) = sin x, prove that f (x) − f (t) = sin t x−t
cos(x − t) − 1 x−t
13. Prove that cos(2t) =
1 − tan2 t . 1 + tan2 t
x 14. Prove that if y = tan , then 2 1 − u2 2u (a) cos x = (b) sin x = 2 1+u 1 + u2
1.3
Inverse Trigonometric Functions
None of the trigonometric functions are one-to-one since they are periodic. In order to define inverses, it is customary to restrict the domains in which the functions are one-to-one as follows.
20
CHAPTER 1. FUNCTIONS
π π 1. y = sin x, − ≤ x ≤ , is one-to-one and covers the range −1 ≤ y ≤ 1. 2 2 Its inverse function is denoted arcsin x, and we define y = arcsin x, −1 ≤ π π x ≤ 1, if and only if, x = sin y, − ≤ y ≤ . 2 2
graph
2. y = cos x, 0 ≤ x ≤ π, is one-to-one and covers the range −1 ≤ y ≤ 1. Its inverse function is denoted arccos x, and we define y = arccos x, −1 ≤ x ≤ 1, if and only if, x = cos y, 0 ≤ y ≤ π.
graph
π −π < x < , is one-to-one and covers the range −∞ < 3. y = tan x, 2 2 y < ∞ Its inverse function is denoted arctan x, and we define y = −π π arctan x, −∞ < x < ∞, if and only if, x = tan y, <y< . 2 2
graph
4. y = cot x, 0, x < π, is one-to-one and covers the range −∞ < y < ∞. Its inverse function is denoted arccot x, and we define y = arccot x, −∞ < x < ∞, if and only if x = cot y, 0 < y < π.
graph
1.3. INVERSE TRIGONOMETRIC FUNCTIONS
21
π π 5. y = sec x, 0 ≤ x ≤ or < x ≤ π is one-to-one and covers the range 2 2 −∞ < y ≤ −1 or 1 ≤ y < ∞. Its inverse function is denoted arcsec x, and we define y = arcsec x, −∞ < x ≤ −1 or 1 ≤ x < ∞, if and only π π if, x = sec y, 0 ≤ y < or < y ≤ π. 2 2
graph
−π π 6. y = csc x, ≤ x < 0 or 0 < x ≤ , is one-to-one and covers the 2 2 range −∞ < y ≤ −1 or 1 ≤ y < ∞. Its inverse is denoted arccsc x and we define y = arccsc x, −∞ < x ≤ −1 or 1 ≤ x < ∞, if and only if, π −π x = csc y, ≤ y < 0 or 0 < y ≤ . 2 2 Example 1.3.1 Show that each of the following equations is valid. π (a) arcsin x + arccos x = 2 π (b) arctan x + arccot x = 2 π (c) arcsec x + arccsc x = 2 To verify equation (a), we let arcsin x = θ.
graph
π − θ = x, as shown in the triangle. It follows Then x = sin θ and cos 2 that π π − θ = arccos x, = θ + arccos x = arcsin x + arccos x. 2 2 The equations in parts (b) and (c) are verified in a similar way.
22
CHAPTER 1. FUNCTIONS
Example 1.3.2 If θ = arcsin x, then compute cos θ, tan θ, cot θ, sec θ and csc θ. π π If θ is − , 0, or , then computations are easy. 2 2
graph
π π < x < 0 or 0 < x < . Then, from the triangle, we get 2 2 √ √ 1 − x2 x 2 , cot θ = cos θ = 1 − x , tan θ = √ , x 1 − x2 1 1 and csc θ = . sec θ = √ x 1 − x2
Suppose that −
Example 1.3.3 Make the given substitutions to simplify the given radical expression and compute all trigonometric functions of θ. √ √ (b) x2 − 9, x = 3 sec θ (a) 4 − x2 , x = 2 sin θ (c) (4 + x2 )3/2 , x = 2 tan θ (a) For part (a), sin θ =
x and we use the given triangle: 2
graph
Then √ √ 4 − x2 x 4 − x2 cos θ = , tan θ = √ , cot θ = , 2 x 4 − x2 2 2 sec θ = √ , csc θ = . x 4 − x2 √ Furthermore, 4 − x2 = 2 cos θ and the radical sign is eliminated.
1.3. INVERSE TRIGONOMETRIC FUNCTIONS (b) For part (b), sec θ =
23
x and we use the given triangle: 3
graph
Then, √ x2 − 4 sin θ = , x
3 cos θ = , x
√ x2 − 4 tan θ = 3
x 3 , csc θ = √ . cot θ = √ 2 2 x −9 x −9 √ Furthermore, x2 − 9 = 3 tan θ and the radical sign is eliminated. (c) For part (c), tan θ =
x and we use the given triangle: 2
graph
Then, x sin θ = √ , 2 x +4
2 cos θ = √ , 2 x +4
cot θ =
√ √ x2 + 4 x2 + 4 sec θ = , csc θ = . 2 x √ Furthermore, x2 + 4 = 2 sec θ and hence (4 + x)3/2 = (2 sec θ)3 = 8 sec3 θ.
2 , x
24
CHAPTER 1. FUNCTIONS
Remark 2 The three substitutions given in Example 15 are very useful in calculus. In general, we use the following substitutions for the given radicals: √ a2 − x2 , x = a sin θ √ (c) a2 + x2 , x = a tan θ.
(a)
(b)
√
x2 − a2 , x = a sec θ
Exercises 1.3 1. Evaluate each of the following: (a) (b) (c) (d)
√ ! 3 1 3 arcsin + 2 arccos 2 2 1 1 4 arctan √ + 5arccot √ 3 3 2 2arcsec (−2) + 3 arccos − √ 3 cos(2 arccos(x))
(e) sin(2 arccos(x)) 2. Simplify each of the following expressions by eliminating the radical by using an appropriate trigonometric substitution. x (a) √ 9 − x2
3+x (b) √ 16 + x2
1+x (d) √ x2 + 2x + 2
2 − 2x (e) √ x2 − 2x − 3
x−2 (c) √ x x2 − 25
(Hint: In parts (d) and (e), complete squares first.) 3. Some famous polynomials are the so-called Chebyshev polynomials, defined by Tn (x) = cos(n arccos x), −1 ≤ x ≤ 1, n = 0, 1, 2, . . . .
1.3. INVERSE TRIGONOMETRIC FUNCTIONS
25
(a) Prove the recurrence relation for Chebyshev polynomials: Tn+1 (x) = 2xTn (x) − Tn−1 (x) for each n ≥ 1.
(b) Show that T0 (x) = 1, T1 (x) = x and generate T2 (x), T3 (x), T4 (x) and T5 (x) using the recurrence relation in part (a). (c) Determine the zeros of Tn (x) and determine where Tn (x) has its absolute maximum or minimum values, n = 1, 2, 3, 4, ?. (Hint: Let θ = arccos x, x = cos θ. Then Tn (x) = cos(nθ), Tn+1 (x) = cos(nθ + θ), Tn−1 (x) = cos(nθ − θ). Use the expansion formulas and then make substitutions in part (a)). 4. Show that for all integers m and n, Tn (x)Tm (x) =
1 [Tm+n (x) + T|m−n| (x)] 2
(Hint: use the expansion formulas as in problem 3.) 5. Find the exact value of y in each of the following a) y = arccos − 12
b) y = arcsin
√ 3 2
√ c) y = arctan(− 3)
√ d) y = arccot − 33
√ e) y = arcsec (− 2)
√ f) y = arccsc (− 2)
g) y = arcsec − √23
h) y = arccsc − √23
i) y = arcsec (−2)
j) y = arccsc (−2)
k) y = arctan
−1 √ 3
√ l) y = arccot (− 3)
6. Solve the following equations for x in radians (all possible answers). a) 2 sin4 x = sin2 x
b) 2 cos2 x − cos x − 1 = 0
c) sin2 x + 2 sin x + 1 = 0
d) 4 sin2 x + 4 sin x + 1 = 0
26
CHAPTER 1. FUNCTIONS e) 2 sin2 x + 5 sin x + 2 = 0
f) cot3 x − 3 cot x = 0
g) sin 2x = cos x
h) cos 2x = cos x
2
i) cos
x 2
= cos x
j) tan x + cot x = 1
7. If arctan t = x, compute sin x, cos x, tan x, cot x, sec x and csc x in terms of t. 8. If arcsin t = x, compute sin x, cos x, tan x, cot x, sec x and csc x in terms of t. 9. If arcsec t = x, compute sin x, cos x, tan x, cot x, sec x and csc x in terms of t. 10. If arccos t = x, compute sin x, cos x, tan x, cot x, sec x and csc x in terms of t. Remark 3 Chebyshev polynomials are used extensively in approximating functions due to their properties that minimize errors. These polynomials are called equal ripple polynomials, since their maxima and minima alternate between 1 and −1.
1.4
Logarithmic, Exponential and Hyperbolic Functions
Most logarithmic tables have tables for log10 x, loge x, ex and e−x because of their universal applications to scientific problems. The key relationship between logarithmic functions and exponential functions, using the same base, is that each one is an inverse of the other. For example, for base 10, we have N = 10x if and only if x = log10 N. We get two very interesting relations, namely x = log10 (10x ) and N = 10(log10 N ) .
1.4. LOGARITHMIC, EXPONENTIAL AND HYPERBOLIC FUNCTIONS27 For base e, we get x = loge (ex ) and y = e(loge y) . If b > 0 and b 6= 1, then b is an admissible base for a logarithm. For such an admissible base b, we get x = logb (bx ) and y = b(logb y) . The Logarithmic function with base b, b > 0, b 6= 1, satisfies the following important properties: 1. logb (b) = 1, logb (1) = 0, and logb (bx ) = x for all real x. 2. logb (xy) = logb x + logb y, x > 0, y > 0. 3. logb (x/y) = logb x − logb y, x > 0, y > 0. 4. logb (xy ) = y logb x, x > 0, x 6= 1, for all real y. 5. (logb x)(loga b) = loga xb > 0, a > 0, b 6= 1, a 6= 1. Note that logb x = loga x . loga b This last equation (5) allows us to compute logarithms with respect to any base b in terms of logarithms in a given base a. The corresponding laws of exponents with respect to an admissible base b, b > 0, b 6= 1 are as follows: 1. b0 = 1, b1 = b, and b(logb x) = x for x > 0. 2. bx × by = bx+y 3.
bx = bx−y by
4. (bx )y = b(xy) Notation: If b = e, then we will express logb (x) as ln(x) or log(x). The notation exp(x) = ex can be used when confusion may arise. The graph of y = log x and y = ex are reflections of each other through the line y = x.
28
CHAPTER 1. FUNCTIONS graph
In applications of calculus to science and engineering, the following six functions, called hyperbolic functions, are very useful. 1. sinh(x) =
1 x (e − e−x ) for all real x, read as hyperbolic sine of x. 2
2. cosh(x) =
1 x (e + e−x ), for all real x, read as hyperbolic cosine of x. 2
3. tanh(x) =
sinh(x) ex − e−x = x , for all real x, read as hyperbolic tangent cosh(x) e + e−x
of x. 4. coth(x) =
ex + e−x cosh(x) = x , x 6= 0, read as hyperbolic cotangent of x. sinh(x) e − e−x
2 1 5. sech (x) = = x , for all real x, read as hyperbolic secant of cosh x e + e−x x. 6. csch (x) =
2 1 = x , x 6= 0, read as hyperbolic cosecant of x. sinh(x) e − e−x
The graphs of these functions are sketched as follows:
graph
Example 1.4.1 Eliminate quotients and exponents in the following equation by taking the natural logarithm of both sides. y=
(x + 1)3 (2x − 3)3/4 (1 + 7x)1/3 (2x + 3)3/2
1.4. LOGARITHMIC, EXPONENTIAL AND HYPERBOLIC FUNCTIONS29 (x + 1)3 (2x − 3)3/4 ln(y) = ln (1 + 7x)1/3 (2x + 3)3/2]
= ln[(x + 1)3 (2x − 3)3/4 ] − ln[(1 + 7x)1/3 (2x + 3)3/2 ] = ln(x + 1)3 + ln(2x − 3)3/4 − {ln(1 + 7x)1/3 + ln(2x + 3)3/2 } 3 1 3 = 3 ln(x + 1) + ln(2x − 3) − ln(1 + 7x) − ln(2x + 3) 4 3 2 Example 1.4.2 Solve the following equation for x: log3 (x4 ) + log3 x3 − 2 log3 x1/2 = 5. Using logarithm properties, we get 4 log3 x + 3 log3 x − log3 x = 5 6 log3 x = 5 5 log3 x = 6 5/6 x = (3) . Example 1.4.3 Solve the following equation for x: 1 ex = . x 1+e 3 On multiplying through, we get 3ex = 1 + ex or 2ex = 1, ex =
1 2
x = ln(1/2) = − ln(2). Example 1.4.4 Prove that for all real x, cosh2 x − sinh2 x = 1. 2 2 1 x 1 x 2 2 −x −x cosh x − sinh x = (e + e ) − (e − e ) 2 2 1 2x = [e + 2 + e−2x ) − (e2x − 2 + e−2x )] 4 1 = [4] 4 =1
30
CHAPTER 1. FUNCTIONS
Example 1.4.5 Prove that (a) sinh(x + y) = sinh x cosh y + cosh x sinh y. (b) sinh 2x = 2 sinh x cosh y. Equation (b) follows from equation (a) by letting x = y. So, we work with equation (a). 1 1 (a) sinh x cosh y + cosh x sinh y = (ex − e−x ) · (ey + e−y ) 2 2 1 x 1 + (e + e−x ) · (ey − e−y ) 2 2 1 x+y = [(e + ex−y − e−x+y − e−x−y ) 4 + (ex+y − ex−y + e−x+y − e−x−y )] 1 = [2(ex+y − e−(x+y) ] 4 1 = (e(x+y) − e−(x+y) ) 2 = sinh(x + y).
Example 1.4.6 Find the inverses of the following functions: (a) sinh x
(b) cosh x
(c) tanh x
1 (a) Let y = sinh x = (ex − e−x ). Then 2 1 x x x −x (e − e ) = e2x − 1 2e y = 2e 2 e2x − 2yex − 1 = 0 (ex )2 − (2y)ex − 1 = 0 p p 2y ± 4y 2 + 4 ex = = y ± y2 + 1 2 p Since ex > 0 for all x, ex = y + 1 + y 2 .
1.4. LOGARITHMIC, EXPONENTIAL AND HYPERBOLIC FUNCTIONS31 On taking natural logarithms of both sides, we get p x = ln(y + 1 + y 2 ). The inverse function of sinh x, denoted arcsinh x, is defined by arcsinh x = ln(x +
√ 1 + x2 )
(b) As in part (a), we let y = cosh x and 1 2ex y = 2ex · (ex + e−x ) = e2x + 1 2 2x x e − (2y)e + 1 = 0 p 2y ± 4y 2 − 4 x e = p2 x e = y ± y 2 − 1. We observe that cosh x is an even function and hence it is not one-toone. Since cosh(−x) = cosh(x), we will solve for the larger x. On taking natural logarithms of both sides, we get p p x1 = ln(y + y 2 − 1) or x2 = ln(y − y 2 − 1). We observe that " # p p 2 − 1)(y + 2 − 1) p (y − y y p x2 = ln(y − y 2 − 1) = ln y + y2 − 1 ! 1 p = ln y + y2 − 1 p = − ln(y + y 2 − 1) = −x1 . Thus, we can define, as the principal branch, arccosh x = ln(x +
√
x2 − 1), x ≥ 1
32
CHAPTER 1. FUNCTIONS
(c) We begin with y = tanh x and clear denominators to get ex − e−x , ex + e−x ex [(ex + e−x )y] = ex [(ex − e−x )] (e2x + 1)y = e2x − 1 e2x (y − 1) = −(1 + y) (1 + y) e2x = − y−1 1+y e2x = 1−y 1+y 2x = ln 1−y 1 1+y x = ln 2 1−y y=
|y| < 1 , , ,
|y| < 1 |y| < 1 |y| < 1
,
|y| < 1
, ,
|y| < 1 |y| < 1
, |y| < 1.
Therefore, the inverse of the function tanh x, denoted arctanhx, is defined by 1+x 1 arctanh , x = ln , |x| < 1. 2 1−x
Exercises 1.4 1. Evaluate each of the following (a) log10 (0.001) (d) log10
(100)1/3 (0.01)2 (.0001)2/3
(b) log2 (1/64) 0.1
2. Prove each of the following identities (a) sinh(x − y) = sinh x cosh y − cosh x sinh y (b) cosh(x + y) = cosh x cosh y + sinh x sinh y
(c) ln(e0.001 ) (e) eln(e
−2 )
1.4. LOGARITHMIC, EXPONENTIAL AND HYPERBOLIC FUNCTIONS33 (c) cosh(x − y) = cosh x cosh y − sinh x sinh y (d) cosh 2x = cosh2 x + sinh2 x = 2 cosh2 x − 1 = 1 + 2 sinh2 x 3. Simplify the radical expression by using the given substitution. √ √ (a) a2 + x2 , x = a sinh t (b) x2 − a2 , x = a cosh t √ (c) a2 − x2 , x = a tanh t 4. Find the inverses of the following functions: (a) coth x
(b) sech x
(c) csch x
3 5. If cosh x = , find sinh x and tanh x. 2 6. Prove that sinh(3t) = 3 sinh t + 4 sinh3 t (Hint: Expand sinh(2t + t).) 7. Sketch the graph of each of the following functions. c) y = 10−x
a) y = 10x
b) y = 2x
e) y = ex
f) y = e−x
j) y = sinh x
k) y = cosh x
n) y = sech x
o) y = csch x
2
g) y = xe−x
d) y = 2−x 2
l) y = tanh x
i) y = e−x m) y = coth x
8. Sketch the graph of each of the following functions. a) y = log10 x
b) y = log2 x
c) y = ln x
e) y = arcsinh x
f) y = arccosh x
g) y = arctanh x
d) y = log3 x
9. Compute the given logarithms in terms log10 2 and log10 3.
34
CHAPTER 1. FUNCTIONS a) log10 36
d) log10 (600)
b) log10
e) log10
27 16
30 16
c) log10
20 9
f) log10
610 (20)5
10. Solve each of the following equations for the independent variable. a) ln x − ln(x + 1) = ln(4)
b) 2 log10 (x − 3) = log10 (x + 5) + log10 4
c) log10 t2 = (log10 t)2
d) e2x − 4ex + 3 = 0
e) ex + 6e−x = 5
f) 2 sinh x + cosh x = 4
Chapter 2 Limits and Continuity 2.1
Intuitive treatment and definitions
2.1.1
Introductory Examples
The concepts of limit and continuity are very closely related. An intuitive understanding of these concepts can be obtained through the following examples. Example 2.1.1 Consider the function f (x) = x2 as x tends to 2. As x tends to 2 from the right or from the left, f (x) tends to 4. The value of f at 2 is 4. The graph of f is in one piece and there are no holes or jumps in the graph. We say that f is continuous at 2 because f (x) tends to f (2) as x tends to 2.
graph
The statement that f (x) tends to 4 as x tends to 2 from the right is expressed in symbols as lim+ f (x) = 4 x→2
and is read, “the limit of f (x), as x goes to 2 from the right, equals 4.” 35
36
CHAPTER 2. LIMITS AND CONTINUITY The statement that f (x) tends to 4 as x tends to 2 from the left is written lim f (x) = 4
x→2−
and is read, “the limit of f (x), as x goes to 2 from the left, equals 4.” The statement that f (x) tends to 4 as x tends to 2 either from the right or from the left, is written lim f (x) = 4 x→2
and is read, “the limit of f (x), as x goes to 2, equals 4.” The statement that f (x) is continuous at x = 2 is expressed by the equation lim f (x) = f (2). x→2
Example 2.1.2 Consider the unit step function as x tends to 0. 0 if x < 0 u(x) = 1 if x ≥ 0.
graph
The function, u(x) tends to 1 as x tends to 0 from the right side. So, we write lim+ u(x) = 1 = u(0). x→0
The limit of u(x) as x tends to 0 from the left equals 0. Hence, lim u(x) = 0 6= u(0).
x→0−
Since lim u(x) = u(0),
x→0+
we say that u(x) is continuous at 0 from the right. Since lim u(x) 6= u(0),
x→0−
2.1. INTUITIVE TREATMENT AND DEFINITIONS
37
we say that u(x) is not continuous at 0 from the left. In this case the jump at 0 is 1 and is defined by jump (u(x), 0) = lim+ u(x) − lim− u(x) x→0
x→0
= 1. Observe that the graph of u(x) has two pieces that are not joined together. Every horizontal line with equation y = c, 0 < c < 1, separates the two pieces of the graph without intersecting the graph of u(x). This kind of jump discontinuity at a point is called “finite jump” discontinuity.
Example 2.1.3 Consider the signum function, sign(x), defined by ( 1 if x > 0 x . = sign (x) = |x| −1 if x < 0 If x > 0, then sign(x) = 1. If x < 0, then sign(x) = −1. In this case, lim sign(x) = 1
x→0+
lim sign(x) = −1
x→0−
jump (sign(x), 0) = 2. Since sign(x) is not defined at x = 0, it is not continuous at 0.
Example 2.1.4 Consider f (θ) =
sin θ as θ tends to 0. θ
graph
The point C(cos θ, sin θ) on the unit circle defines sin θ as the vertical length BC. The radian measure of the angle θ is the arc length DC. It is
38
CHAPTER 2. LIMITS AND CONTINUITY
clear that the vertical length BC and arc length DC get closer to each other as θ tends to 0 from above. Thus,
graph
sin θ = 1. θ→0 θ For negative θ, sin θ and θ are both negative. lim+
lim+
θ→0
sin(−θ) − sin θ = lim+ = 1. θ→0 −θ −θ
Hence, sin θ = 1. θ→0 θ This limit can be verified by numerical computation for small θ. lim
Example 2.1.5 Consider f (x) =
1 as x tends to 0 and as x tends to ±∞. x
graph
It is intuitively clear that 1 x→0 x 1 lim x→+∞ x 1 lim− x→0 x 1 lim x→−∞ x lim+
= +∞ =0 = −∞ = 0.
2.1. INTUITIVE TREATMENT AND DEFINITIONS
39
The function f is not continuous at x = 0 because it is not defined for x = 0. This discontinuity is not removable because the limits from the left and from the right, at x = 0, are not equal. The horizontal and vertical axes divide the graph of f in two separate pieces. The vertical axis is called the vertical asymptote of the graph of f . The horizontal axis is called the horizontal asymptote of the graph of f . We say that f has an essential discontinuity at x = 0.
Example 2.1.6 Consider f (x) = sin(1/x) as x tends to 0.
graph
The period of the sine function is 2π. As observed in Example 5, 1/x becomes very large as x becomes small. For this reason, many cycles of the sine wave pass from the value −1 to the value +1 and a rapid oscillation occurs near zero. None of the following limits exist: 1 1 1 , lim− sin , lim sin . lim+ sin x→0 x→0 x→0 x x x It is not possible to define the function f at 0 to make it continuous. This kind of discontinuity is called an “oscillation” type of discontinuity.
1 as x tends to 0. Example 2.1.7 Consider f (x) = x sin x
graph
1 In this example, sin , oscillates as in Example 6, but the amplitude x
40
CHAPTER 2. LIMITS AND CONTINUITY
|x| tends to zero as x tends to 0. In this case, 1 lim+ x sin =0 x→0 x 1 lim− x sin =0 x→0 x 1 lim x sin = 0. x→0 x The discontinuity at x = 0 is removable. We define f (0) = 0 to make f continuous at x = 0. x−2 as x tends to ±2. x2 − 4 This is an example of a rational function that yields the indeterminate form 0/0 when x is replaced by 2. When this kind of situation occurs in rational functions, it is necessary to cancel the common factors of the numerator and the denominator to determine the appropriate limit if it exists. In this example, x − 2 is the common factor and the reduced form is obtained through cancellation. Example 2.1.8 Consider f (x) =
graph
x−2 x−2 = 2 x −4 (x − 2)(x + 2) 1 = . x+2
f (x) =
In order to get the limits as x tends to 2, we used the reduced form to get 1/4. The discontinuity at x = 2 is removed if we define f (2) = 1/4. This function still has the essential discontinuity at x = −2.
2.1. INTUITIVE TREATMENT AND DEFINITIONS
41
â&#x2C6;&#x161; xâ&#x2C6;&#x2019; 3 Example 2.1.9 Consider f (x) = as x tends to 3. x2 â&#x2C6;&#x2019; 9 In this case f is not a rational still, the problem at x = 3 is â&#x2C6;&#x161; â&#x2C6;&#x161; function; caused by the common factor ( x â&#x2C6;&#x2019; 3). â&#x2C6;&#x161;
graph
â&#x2C6;&#x161; â&#x2C6;&#x161; xâ&#x2C6;&#x2019; 3 f (x) = x2 â&#x2C6;&#x2019; 9 â&#x2C6;&#x161; â&#x2C6;&#x161; ( x â&#x2C6;&#x2019; 3) â&#x2C6;&#x161; â&#x2C6;&#x161; â&#x2C6;&#x161; = â&#x2C6;&#x161; (x + 3)( x â&#x2C6;&#x2019; 3)( x + 3) 1 â&#x2C6;&#x161; . = â&#x2C6;&#x161; (x + 3)( x + 3) â&#x2C6;&#x161; As x tends to 3, the reduced form of f tends to 1/(12 3). Thus, lim+ f (x) = limâ&#x2C6;&#x2019; f (x) = lim f (x) =
xâ&#x2020;&#x2019;3
xâ&#x2020;&#x2019;3
xâ&#x2020;&#x2019;3
1 â&#x2C6;&#x161; . 12 3
1 The discontinuity of f at x = 3 is removed by defining f (3) = â&#x2C6;&#x161; . The 12 3 â&#x2C6;&#x161; other discontinuities of f at x = â&#x2C6;&#x2019;3 and x = â&#x2C6;&#x2019; 3 are essential discontinuities and cannot be removed. Even though calculus began intuitively, formal and precise definitions of limit and continuity became necessary. These precise definitions have become the foundations of calculus and its applications to the sciences. Let us assume that a function f is defined in some open interval, (a, b), except possibly at one point c, such that a < c < b. Then we make the following definitions using the Greek symbols: , read â&#x20AC;&#x153;epsilonâ&#x20AC;? and δ, read, â&#x20AC;&#x153;delta.â&#x20AC;?
2.1.2
Limit: Formal Definitions
42
CHAPTER 2. LIMITS AND CONTINUITY
Definition 2.1.1 The limit of f (x) as x goes to c from the right is L, if and only if, for each > 0, there exists some δ > 0 such that |f (x) â&#x2C6;&#x2019; L| < ,
whenever, c < x < c + δ.
The statement that the limit of f (x) as x goes to c from the right is L, is expressed by the equation lim+ f (x) = L. xâ&#x2020;&#x2019;c
graph
Definition 2.1.2 The limit of f (x) as x goes to c from the left is L, if and only if, for each > 0, there exists some δ > 0 such that |f (x) â&#x2C6;&#x2019; L| < ,
whenever, c â&#x2C6;&#x2019; δ < x < c.
The statement that the limit of f (x) as x goes to c from the left is L, is written as limâ&#x2C6;&#x2019; f (x) = L. xâ&#x2020;&#x2019;c
graph
Definition 2.1.3 The (two-sided) limit of f (x) as x goes to c is L, if and only if, for each > 0, there exists some δ > 0 such that |f (x) â&#x2C6;&#x2019; L| < ,
graph
whenever 0 < |x â&#x2C6;&#x2019; c| < δ.
2.1. INTUITIVE TREATMENT AND DEFINITIONS
43
The equation lim f (x) = L
x→c
is read “the (two-sided) limit of f (x) as x goes to c equals L.”
2.1.3
Continuity: Formal Definitions
Definition 2.1.4 The function f is said to be continuous at c from the right if f (c) is defined, and lim+ f (x) = f (c). x→c
Definition 2.1.5 The function f is said to be continuous at c from the left if f (c) is defined, and lim− f (x) = f (c). x→c
Definition 2.1.6 The function f is said to be (two-sided) continuous at c if f (c) is defined, and lim f (x) = f (c). x→c
Remark 4 The continuity definition requires that the following conditions be met if f is to be continuous at c: (i) f (c) is defined as a finite real number, (ii) lim− f (x) exists and equals f (c), x→c
(iii) lim+ f (x) exists and equals f (c), x→c
(iv) lim− f (x) = f (c) = lim+ f (x). x→c
x→c
When a function f is not continuous at c, one, or more, of these conditions are not met.
44
CHAPTER 2. LIMITS AND CONTINUITY
Remark 5 All polynomials, sin x, cos x, ex , sinh x, cosh x, bx , b 6= 1 are continuous for all real values of x. All logarithmic functions, logb x, b > 0, b 6= 1 are continuous for all x > 0. Each rational function, p(x)/q(x), is continuous where q(x) 6= 0. Each of the functions tan x, cot x, sec x, csc x, tanh x, coth x, sech x, and csch x is continuous at each point of its domain. Definition 2.1.7 (Algebra of functions) Let f and g be two functions that have a common domain, say D. Then we define the following for all x in D: 1. (f + g)(x) = f (x) + g(x)
(sum of f and g)
2. (f − g)(x) = f (x) − g(x)
(difference of f and g)
f (x) f (x) = , if g(x) 6= 0 3. g g(x)
(quotient of f and g)
4. (gf )(x) = g(x)f (x)
(product of f and g)
If the range of f is a subset of the domain of g, then we define the composition, g ◦ f , of f followed by g, as follows: 5. (g ◦ f )(x) = g(f (x)) Remark 6 The following theorems on limits and continuity follow from the definitions of limit and continuity. Theorem 2.1.1 Suppose that for some real numbers L and M , lim f (x) = L x→c
and lim g(x) = M . Then x→c
(i) lim k = k, where k is a constant function. x→c
(ii) lim (f (x) + g(x)) = lim f (x) + lim g(x) x→c
x→c
x→c
(iii) lim (f (x) − g(x)) = lim f (x) − lim g(x) x→c
x→c
x→c
2.1. INTUITIVE TREATMENT AND DEFINITIONS
45
(iv) lim (f (x)g(x)) = lim f (x) lim g(x) xâ&#x2020;&#x2019;c
(v) lim
xâ&#x2020;&#x2019;c
xâ&#x2020;&#x2019;c
f (x) g(x)
xâ&#x2020;&#x2019;c
lim f (x)
=
xâ&#x2020;&#x2019;c
lim g(x)
, if lim g(x) 6= 0 xâ&#x2020;&#x2019;c
xâ&#x2020;&#x2019;c
Proof. Part (i) Let f (x) = k for all x and > 0 be given. Then |f (x) â&#x2C6;&#x2019; k| = |k â&#x2C6;&#x2019; k| = 0 < for all x. This completes the proof of Part (i). For Parts (ii)â&#x20AC;&#x201C;(v) let > 0 be given and let lim f (x) = L and
xâ&#x2020;&#x2019;c
lim g(x) = M.
xâ&#x2020;&#x2019;c
By definition there exist δ1 > 0 and δ2 > 0 such that 3 |g(x) â&#x2C6;&#x2019; M | < 3 |f (x) â&#x2C6;&#x2019; L| <
whenever 0 < |x â&#x2C6;&#x2019; c| < δ1
(1)
whenever 0 < |x â&#x2C6;&#x2019; c| < δ2
(2)
Part (ii) Let δ = min(δ1 , δ2 ). Then 0 < |x â&#x2C6;&#x2019; c| < δ implies that 0 < |x â&#x2C6;&#x2019; c| < δ1 0 < |x â&#x2C6;&#x2019; c| < δ2
(by (1)) 3 (by (2)) and |g(x) â&#x2C6;&#x2019; M | < 3 and |f (x) â&#x2C6;&#x2019; L| <
Hence, if 0 < |x â&#x2C6;&#x2019; c| < δ, then |(f (x) + g(x)) â&#x2C6;&#x2019; (L + M )| = |(f (x) â&#x2C6;&#x2019; L) + (g(x) â&#x2C6;&#x2019; M )| â&#x2030;¤ |f (x) â&#x2C6;&#x2019; L| + |g(x) â&#x2C6;&#x2019; M | (by (3) and (4)) < + 3 3 < . This completes the proof of Part (ii).
(3) (4)
46
CHAPTER 2. LIMITS AND CONTINUITY
Part (iii) Let δ be defined as in Part (ii). Then 0 < |x â&#x2C6;&#x2019; c| < δ implies that |(f (x) â&#x2C6;&#x2019; g(x)) â&#x2C6;&#x2019; (L â&#x2C6;&#x2019; M )| = |(f (x) â&#x2C6;&#x2019; L) + (g(x) â&#x2C6;&#x2019; M )| â&#x2030;¤ |f (x) â&#x2C6;&#x2019; L| + |g(x) â&#x2C6;&#x2019; M | < + 3 3 < . This completes the proof of Part (iii). Part (iv) Let > 0 be given. Let 1 = min 1,
1 + |L| + |M |
.
Then 1 > 0 and, by definition, there exist δ1 and δ2 such that |f (x) â&#x2C6;&#x2019; L| < 1 |g(x) â&#x2C6;&#x2019; M | < 1
whenever 0 < |x â&#x2C6;&#x2019; c| < δ1 whenever 0 < |x â&#x2C6;&#x2019; c| < δ2
(5) (6)
Let δ = min(δ1 , δ2 ). Then 0 < |x â&#x2C6;&#x2019; c| < δ implies that 0 < |x â&#x2C6;&#x2019; c| < δ1 and |f (x) â&#x2C6;&#x2019; L| < 1 0 < |x â&#x2C6;&#x2019; c| < δ2 and |g(x) â&#x2C6;&#x2019; M | < 1
(by (5)) (by (6))
(7) (8)
Also, |f (x)g(x) â&#x2C6;&#x2019; LM | = |(f (x) â&#x2C6;&#x2019; L + L)(g(x) â&#x2C6;&#x2019; M + M ) â&#x2C6;&#x2019; LM | = |(f (x) â&#x2C6;&#x2019; L)(g(x) â&#x2C6;&#x2019; M ) + (f (x) â&#x2C6;&#x2019; L)M + L(g(x) â&#x2C6;&#x2019; M )| â&#x2030;¤ |f (x) â&#x2C6;&#x2019; L| |g(x) â&#x2C6;&#x2019; M | + |f (x) + L| |M | + |L| |g(x) â&#x2C6;&#x2019; M | < 21 + |M | 1 + |L| 1 â&#x2030;¤ 1 + |M | 1 + |L| 1 = (1 + |M | + |N |) 1 â&#x2030;¤ . This completes the proof of Part (iv). Part (v) Suppose that M > 0 and lim g(x) = M . Then we show that xâ&#x2020;&#x2019;c
lim
xâ&#x2020;&#x2019;c
1 1 = . g(x) M
2.1. INTUITIVE TREATMENT AND DEFINITIONS
47
Since M/2 > 0, there exists some δ1 > 0 such that M 2 M 3M â&#x2C6;&#x2019; + M < g(x) < 2 2 M 3M 0< < g(x) < 2 2 1 2 < |g(x)| M |g(x) â&#x2C6;&#x2019; M | <
whenever 0 < |x â&#x2C6;&#x2019; c| < δ1 , whenever 0 < |x â&#x2C6;&#x2019; c| < δ1 , whenever 0 < |x â&#x2C6;&#x2019; c| < δ1 , whenever 0 < |x â&#x2C6;&#x2019; c| < δ1 .
Let > 0 be given. Let 1 = M 2 /2. Then 1 > 0 and there exists some δ > 0 such that δ < δ1 and |g(x) â&#x2C6;&#x2019; M | < 1 whenever 0 < |x â&#x2C6;&#x2019; c| < δ < δ1 ,
1 1
M â&#x2C6;&#x2019; g(x)
|g(x) â&#x2C6;&#x2019; M |
g(x) â&#x2C6;&#x2019; M = g(x)M = |g(x)|M 1 1 = · |g(x) â&#x2C6;&#x2019; M | M |g(x)| 1 2 < · · 1 M M 2 1 = 2 M = whenever 0 < |x â&#x2C6;&#x2019; c| < δ. This completes the proof of the statement lim
xâ&#x2020;&#x2019;c
1 1 = g(x) M
whenever M > 0.
The case for M < 0 can be proven in a similar manner. Now, we can use Part (iv) to prove Part (v) as follows: 1 f (x) = lim f (x) · lim xâ&#x2020;&#x2019;c xâ&#x2020;&#x2019;c g(x) g(x) 1 = lim f (x) · lim xâ&#x2020;&#x2019;c xâ&#x2020;&#x2019;c g(x) 1 =L· M L = . M
48
CHAPTER 2. LIMITS AND CONTINUITY
This completes the proof of Theorem 2.1.1. Theorem 2.1.2 If f and g are two functions that are continuous on a common domain D, then the sum, f + g, the difference, f â&#x2C6;&#x2019; g and the product, f g, are continuous on D. Also, f /g is continuous at each point x in D such that g(x) 6= 0. Proof. If f and g are continuous at c, then f (c) and g(c) are real numbers and lim f (x) = f (c), lim g(x) = g(c). xâ&#x2020;&#x2019;c
xâ&#x2020;&#x2019;c
By Theorem 2.1.1, we get lim(f (x) + g(x)) = lim f (x) + lim g(x) = f (c) + g(c)
xâ&#x2020;&#x2019;c
xâ&#x2020;&#x2019;c
xâ&#x2020;&#x2019;c
lim(f (x) â&#x2C6;&#x2019; g(x)) = lim f (x) â&#x2C6;&#x2019; lim g(x) = f (c) â&#x2C6;&#x2019; g(c) xâ&#x2020;&#x2019;c xâ&#x2020;&#x2019;c lim(f (x)g(x)) = lim f (x) lim(g(x)) = f (c)g(c) xâ&#x2020;&#x2019;c xâ&#x2020;&#x2019;c xâ&#x2020;&#x2019;c limxâ&#x2020;&#x2019;c f (x) f (c) f (x) = = , if g(c) 6= 0. lim xâ&#x2020;&#x2019;c g(x) limxâ&#x2020;&#x2019;c g(x) g(c) xâ&#x2020;&#x2019;c
This completes the proof of Theorem 2.1.2.
2.1.4
Continuity Examples
Example 2.1.10 Show that the constant function f (x) = 4 is continuous at every real number c. Show that for every constant k, f (x) = k is continuous at every real number c. First of all, if f (x) = 4, then f (c) = 4. We need to show that lim 4 = 4.
xâ&#x2020;&#x2019;c
graph
For each > 0, let δ = 1. Then |f (x) â&#x2C6;&#x2019; f (c)| = |4 â&#x2C6;&#x2019; 4| = 0 <
2.1. INTUITIVE TREATMENT AND DEFINITIONS
49
for all x such that |x â&#x2C6;&#x2019; c| < 1. Secondly, for each > 0, let δ = 1. Then |f (x) â&#x2C6;&#x2019; f (c)| = |k â&#x2C6;&#x2019; k| = 0 < for all x such that |x â&#x2C6;&#x2019; c| < 1. This completes the required proof.
Example 2.1.11 Show that f (x) = 3x â&#x2C6;&#x2019; 4 is continuous at x = 3. Let > 0 be given. Then |f (x) â&#x2C6;&#x2019; f (3)| = |(3x â&#x2C6;&#x2019; 4) â&#x2C6;&#x2019; (5)| = |3x â&#x2C6;&#x2019; 9| = 3|x â&#x2C6;&#x2019; 3| < whenever |x â&#x2C6;&#x2019; 3| < . 3 We define δ = . Then, it follows that 3 lim f (x) = f (3)
xâ&#x2020;&#x2019;3
and, hence, f is continuous at x = 3.
Example 2.1.12 Show that f (x) = x3 is continuous at x = 2. Since f (2) = 8, we need to prove that lim x3 = 8 = 23 .
xâ&#x2020;&#x2019;2
graph
Let > 0 be given. Let us concentrate our attention on the open interval
50
CHAPTER 2. LIMITS AND CONTINUITY
(1, 3) that contains x = 2 at its mid-point. Then |f (x) â&#x2C6;&#x2019; f (2)| = |x3 â&#x2C6;&#x2019; 8| = |(x â&#x2C6;&#x2019; 2)(x2 + 2x + 4)| = |x â&#x2C6;&#x2019; 2| |x2 + 2x + 4| â&#x2030;¤ |x â&#x2C6;&#x2019; 2|(|x|2 + 2|x| + 4) (Triangle Inequality |u + v| â&#x2030;¤ |u| + |v|) â&#x2030;¤ |x â&#x2C6;&#x2019; 2|(9 + 18 + 4) = 31|x â&#x2C6;&#x2019; 2| < Provided
. 31 Since we are concentrating on the interval (1, 3) for which |x â&#x2C6;&#x2019; 2| < 1, we need to define δ to be the minimum of 1 and . Thus, if we define δ = 31 min{1, /31}, then |f (x) â&#x2C6;&#x2019; f (2)| < |x â&#x2C6;&#x2019; 2| <
whenever |x â&#x2C6;&#x2019; 2| < δ. By definition, f (x) is continuous at x = 2.
Example 2.1.13 Show that every polynomial P (x) is continuous at every c. From algebra, we recall that, by the Remainder Theorem, P (x) = (x â&#x2C6;&#x2019; c)Q(x) + P (c). Thus, |P (x) â&#x2C6;&#x2019; P (c)| = |x â&#x2C6;&#x2019; c||Q(x)| where Q(x) is a polynomial of degree one less than the degree of P (x). As in Example 12, |Q(x)| is bounded on the closed interval [c â&#x2C6;&#x2019; 1, c + 1]. For example, if Q(x) = q0 xnâ&#x2C6;&#x2019;1 + q1 xnâ&#x2C6;&#x2019;2 + · · · + qnâ&#x2C6;&#x2019;2 x + qnâ&#x2C6;&#x2019;1 |Q(x)| â&#x2030;¤ |q0 | |x|nâ&#x2C6;&#x2019;1 + |q1 | |x|nâ&#x2C6;&#x2019;2 + · · · + |qnâ&#x2C6;&#x2019;2 | |x| + |qnâ&#x2C6;&#x2019;1 |. Let m = max{|x| : c â&#x2C6;&#x2019; 1 â&#x2030;¤ x â&#x2030;¤ c + 1}. Then |Q(x)| â&#x2030;¤ |q0 |mnâ&#x2C6;&#x2019;1 + |q1 |mnâ&#x2C6;&#x2019;2 + · · · + qnâ&#x2C6;&#x2019;2 m + |qnâ&#x2C6;&#x2019;1 | = M,
2.1. INTUITIVE TREATMENT AND DEFINITIONS
51
for some M . Then |P (x) â&#x2C6;&#x2019; P (c)| = |x â&#x2C6;&#x2019; c| |Q(x)| â&#x2030;¤ M |x â&#x2C6;&#x2019; c| < n o whenever |x â&#x2C6;&#x2019; c| < . As in Example 12, we define δ = min 1, . Then M M |P (x) â&#x2C6;&#x2019; P (c)| < , whenever |x â&#x2C6;&#x2019; c| < δ. Hence, lim P (x) = P (c)
xâ&#x2020;&#x2019;c
and by definition P (x) is continuous at each number c. 1 Example 2.1.14 Show that f (x) = is continuous at every real number x c > 0. We need to show that 1 1 lim = . xâ&#x2020;&#x2019;c x c c Let > 0 be given. Let us concentrate on the interval |x â&#x2C6;&#x2019; c| â&#x2030;¤ ; that is, 2 c 3c â&#x2030;¤ x â&#x2030;¤ . Clearly, x 6= 0 in this interval. Then 2 2
1 1
|f (x) â&#x2C6;&#x2019; f (c)| = â&#x2C6;&#x2019;
x c
c â&#x2C6;&#x2019; x
=
cx
1 1 = |x â&#x2C6;&#x2019; c| · · c |x| 1 2 < |x â&#x2C6;&#x2019; c| · · c c 2 = 2 |x â&#x2C6;&#x2019; c| c < whenever |x â&#x2C6;&#x2019; c| <
c2 . 2
We define δ = min
c c2 , . Then for all x such that |x â&#x2C6;&#x2019; c| < δ, 2 2
1 1
â&#x2C6;&#x2019; < .
x c
52
CHAPTER 2. LIMITS AND CONTINUITY
Hence, lim
xâ&#x2020;&#x2019;c
1 1 = x c
1 is continuous at each c > 0. x 1 A similar argument can be used for c < 0. The function f (x) = is x continuous for all x 6= 0.
and the function f (x) =
Example 2.1.15 Suppose that the domain of a function g contains an open interval containing c, and the range of g contains an open interval containing g(c). Suppose further that the domain of f contains the range of g. Show that if g is continuous at c and f is continuous at g(c), then the composition f â&#x2014;Ś g is continuous at c. We need to show that lim f (g(x)) = f (g(c)).
xâ&#x2020;&#x2019;c
Let > 0 be given. Since f is continuous at g(c), there exists δ1 > 0 such that 1. |f (y) â&#x2C6;&#x2019; f (g(c))| < , whenever, |y â&#x2C6;&#x2019; g(c)| < δ1 . Since g is continuous at c, and δ1 > 0, there exists δ > 0 such that 2. |g(x) â&#x2C6;&#x2019; g(c)| < δ1 , whenever, |x â&#x2C6;&#x2019; c| < δ. On replacing y by g(x) in equation (1), we get |f (g(x)) â&#x2C6;&#x2019; f (g(c))| < , whenever, |x â&#x2C6;&#x2019; c| < δ. By definition, it follows that lim f (g(x)) = f (g(c))
xâ&#x2020;&#x2019;c
and the composition f â&#x2014;Ś g is continuous at c.
Example 2.1.16 Suppose that two functions f and g have a common domain that contains one open interval containing c. Suppose further that f and g are continuous at c. Then show that
2.1. INTUITIVE TREATMENT AND DEFINITIONS
53
(i) f + g is continuous at c, (ii) f â&#x2C6;&#x2019; g is continuous at c, (iii) kf is continuous at c for every constant k 6= 0, (iv) f · g is continuous at c. Part (i) We need to prove that lim [f (x) + g(x)] = f (c) + g(c).
xâ&#x2020;&#x2019;c
Let > 0 be given. Then > 0. Since f is continuous at c and > 0, there 2 2 exists some δ1 > 0 such that |f (x) â&#x2C6;&#x2019; f (c)| < , whenever, |x â&#x2C6;&#x2019; c| â&#x2030;¤ δ1 . 2
(1)
Also, since g is continuous at c and
> 0, there exists some δ2 > 0 such that 2
δ |g(x) â&#x2C6;&#x2019; g(c)| < , whenever, |x â&#x2C6;&#x2019; c| < . 2 2
(2)
Let δ = min{δ1 , δ2 }. Then δ > 0. Let |x â&#x2C6;&#x2019; c| < δ. Then |x â&#x2C6;&#x2019; c| < δ1 and |x â&#x2C6;&#x2019; c| < δ2 . For this choice of x, we get |{f (x) + g(x)} â&#x2C6;&#x2019; {f (c) + g(c)}| = |{f (x) â&#x2C6;&#x2019; f (c)} + {g(x) â&#x2C6;&#x2019; g(c)}| â&#x2030;¤ |f (x) â&#x2C6;&#x2019; f (c)| + |g(x) â&#x2C6;&#x2019; g(c)| (by triangle inequality) < + 2 2 = . It follows that lim (f (x) + g(x)) = f (c) + g(c)
xâ&#x2020;&#x2019;0
and f + g is continuous at c. This proves part (i).
54
CHAPTER 2. LIMITS AND CONTINUITY
Part (ii) For Part (ii) we chose , /2, δ1 , δ2 and δ exactly as in Part (i). Suppose |x â&#x2C6;&#x2019; c| < δ. Then |x â&#x2C6;&#x2019; c| < δ1 and |x â&#x2C6;&#x2019; c| < δ2 . For these choices of x we get |{f (x) â&#x2C6;&#x2019; g(x)} â&#x2C6;&#x2019; {f (c) â&#x2C6;&#x2019; g(c)}| = |{f (x) â&#x2C6;&#x2019; f (c)} â&#x2C6;&#x2019; {g(x) â&#x2C6;&#x2019; g(c)}| â&#x2030;¤ |f (x) â&#x2C6;&#x2019; f (c)| + |g(x) â&#x2C6;&#x2019; g(c)| (by triangle inequality) < + 2 2 = . It follows that lim (f (x) â&#x2C6;&#x2019; g(x)) = f (c) â&#x2C6;&#x2019; g(c)
xâ&#x2020;&#x2019;c
and, hence, f â&#x2C6;&#x2019; g is continuous at c. Part (iii) For Part (iii) let > 0 be given. Since k 6= 0, continuous at c, there exists some δ > 0 such that |f (x) â&#x2C6;&#x2019; f (c)| <
, |k|
whenever, |x â&#x2C6;&#x2019; c| < δ.
If |x â&#x2C6;&#x2019; c| < δ, then |kf (x) â&#x2C6;&#x2019; kf (c)| = |k(f (x) â&#x2C6;&#x2019; f (c))| = |k| |(f (x) â&#x2C6;&#x2019; f (c)| < |k| · |k| = . It follows that lim kf (x) = kf (c)
xâ&#x2020;&#x2019;c
and, hence, kf is continuous at c. Part (iv) We need to show that lim (f (x)g(x)) = f (c)g(c).
xâ&#x2020;&#x2019;c
> 0. Since f is |k|
2.1. INTUITIVE TREATMENT AND DEFINITIONS
55
Let > 0 be given. Without loss of generality we may assume that < 1. Let 1 = . Then 1 > 0, 1 < 1 and 1 (1 + |f | + |g(c)|) = 2(1 + |f (c)| + |g(c)|) < . Since f is continuous at c and 1 > 0, there exists δ1 > 0 such that 2 |f (x) â&#x2C6;&#x2019; f (c)| < 1
whenever, |x â&#x2C6;&#x2019; c| < δ1 .
Also, since g is continuous at c and 1 > 0, there exists δ2 > 0 such that |g(x) â&#x2C6;&#x2019; g(c)| < 1
whenever, |x â&#x2C6;&#x2019; c| < δ2 .
Let δ = min{δ1 , δ2 } and |x â&#x2C6;&#x2019; c| < δ. For these choices of x, we get |f (x)g(x) â&#x2C6;&#x2019; f (c)g(c)| = |(f (x) â&#x2C6;&#x2019; f (c) + f (c))(g(x) â&#x2C6;&#x2019; g(c) + g(c)) â&#x2C6;&#x2019; f (c)g(c)| = |(f (x) â&#x2C6;&#x2019; f (c))(g(x) â&#x2C6;&#x2019; g(c)) + (f (x) â&#x2C6;&#x2019; f (c))g(c) + f (c)(g(x) â&#x2C6;&#x2019; g(c))| â&#x2030;¤ |f (x) â&#x2C6;&#x2019; f (c)| |g(x) â&#x2C6;&#x2019; g(c)| + |f (x) â&#x2C6;&#x2019; f (c)| |g(c)| + |f (c)| |g(x) â&#x2C6;&#x2019; g(c)| < 1 ¡ 1 + 1 |g(c)| + 1 |f (c)| < 1 (1 + |g(c)| + |f (c)|) , (since 1 < 1) < . It follows that lim f (x)g(x) = f (c)g(c)
xâ&#x2020;&#x2019;c
and, hence, the product f ¡ g is continuous at c.
Example 2.1.17 Show that the quotient f /g is continuous at c if f and g are continuous at c and g(c) 6= 0. First of all, let us observe that the function 1/g is a composition of g(x) and 1/x and hence 1/g is continuous at c by virtue of the arguments in Examples 14 and 15. By the argument in Example 16, the product f (1/g) = f /g is continuous at c, as required in Example 17.
Example 2.1.18 Show that a rational function of the form p(x)/q(x) is continuous for all c such that g(c) 6= 0.
56
CHAPTER 2. LIMITS AND CONTINUITY
In Example 13, we showed that each polynomial function is continuous at every real number c. Therefore, p(x) is continuous at every c and q(x) is continuous at every c. By virtue of the argument in Example 17, the quotient p(x)/q(x) is continuous for all c such that q(c) 6= 0.
Example 2.1.19 Suppose that f (x) â&#x2030;¤ g(x) â&#x2030;¤ h(x) for all x in an open interval containing c and lim f (x) = lim h(x) = L.
xâ&#x2020;&#x2019;c
xâ&#x2020;&#x2019;c
Then, show that, lim g(x) = L.
xâ&#x2020;&#x2019;c
Let > 0 be given. Then there exist δ1 > 0, δ2 > 0, and δ = min{δ1 , δ2 } such that |f (x) â&#x2C6;&#x2019; L| < whenever 0 < |x â&#x2C6;&#x2019; c| < δ1 2 |h(x) â&#x2C6;&#x2019; L) < whenever 0 < |x â&#x2C6;&#x2019; c| < δ2 . 2 If 0 < |x â&#x2C6;&#x2019; c| < δ1 , then 0 < |x â&#x2C6;&#x2019; c| < δ1 , 0 < |x â&#x2C6;&#x2019; c| < δ2 and, hence, â&#x2C6;&#x2019; < f (x) â&#x2C6;&#x2019; L < g(x) â&#x2C6;&#x2019; L < h(x) â&#x2C6;&#x2019; L < . 2 2 It follows that |g(x) â&#x2C6;&#x2019; L| <
< whenever 0 < |x â&#x2C6;&#x2019; c| < δ, 2
and lim g(x) = L.
xâ&#x2020;&#x2019;c
Example 2.1.20 Show that f (x) = |x| is continuous at 0. We need to show that lim |x| = 0. xâ&#x2020;&#x2019;0
Let > 0 be given. Let δ = . Then |x â&#x2C6;&#x2019; 0| < implies that |x| < Hence, lim |x| = 0
xâ&#x2020;&#x2019;0
2.1. INTUITIVE TREATMENT AND DEFINITIONS
57
Example 2.1.21 Show that (i) lim sin θ = 0 θ→0 sin θ (iii) lim =1 θ→0 θ
(ii) lim cos θ = 1 θ→0 1 − cos θ (iv) lim =0 θ→0 θ
graph
Part (i) By definition, the point C(cos θ, sin θ), where θ is the length of the arc CD, lies on the unit circle. It is clear that the length BC = sin θ is less than θ, the arclength of the arc CD, for small positive θ. Hence, −θ ≤ sin θ ≤ θ and lim sin θ = 0.
θ→0+
For small negative θ, we get θ ≤ sin θ ≤ −θ and lim sin θ = 0.
θ→0−
Therefore, lim sin θ = 0.
θ→0
Part (ii) It is clear that the point B approaches D as θ tends to zero. Therefore, lim cos θ = 1. θ→0
Part (iii) Consider the inequality Area of triangle ABC ≤ Area of sector ADC ≤ Area of triangle ADE 1 1 sin θ 1 cos θ sin θ ≤ θ ≤ . 2 2 2 cos θ
58
CHAPTER 2. LIMITS AND CONTINUITY
Assume that θ is small but positive. Multiply each part of the inequality by 2/ sin θ to get θ 1 cos θ ≤ ≤ . sin θ cos θ On taking limits and using the squeeze theorem, we get lim+
θ = 1. sin θ
lim+
sin θ = 1. θ
θ→0
By taking reciprocals, we get
θ→0
Since
sin(−θ) sin θ = , −θ θ sin θ lim− = 1. θ−0 θ
Therefore, lim
θ→0
sin θ = 1. θ
Part (iv) lim
θ→0
1 − cos θ (1 − cos θ)(1 + cos θ) = lim θ→0 θ θ(1 + cos θ) 2 1 1 − cos θ · = lim θ→0 θ (1 + cos θ) sin θ sin θ · = lim θ→0 θ 1 + cos θ 0 =1· 2 = 0.
Example 2.1.22 Show that (i) sin θ and cos θ are continuous for all real θ.
2.1. INTUITIVE TREATMENT AND DEFINITIONS (ii) tan θ and sec θ are continuous for all θ 6= 2nπ ±
π , n integer. 2
(iii) cot θ and csc θ are continuous for all θ 6= nπ, n integer. Part (i) First, we show that for all real c, lim sin θ = sin c or equivalently lim | sin θ − sin c| = 0.
θ→c
θ→c
We observe that
θ + c θ − c
0 ≤ | sin θ − sin c| =
2 cos sin 2 2
(θ − c)
≤
2 sin 2
sin (θ−c)
= |(θ − c)| (θ−c)2
2
Therefore, by squeeze theorem,
0 ≤ lim | sin θ − sin c| ≤ 0 · 1 = 0. θ−c
It follows that for all real c, sin θ is continuous at c. Next, we show that lim cos x = cos c or equivalently lim | cos x − cos c| = 0.
x→c
x→c
We observe that
Therefore,
x+c (x − c)
0 ≤ | cos x − cos c| = −2 sin sin 2 2
sin x−c
x + c
2
≤ |θ − c| x−c ;
sin 2 ≤ 1
2 0 ≤ lim | cos x − cos c| ≤ 0 · 1 = 0 x→c
and cos x is continuous at c.
59
60
CHAPTER 2. LIMITS AND CONTINUITY
Part (ii) Since for all θ 6= 2nπ ± π2 , n integer, tan θ =
sin θ 1 , sec θ = cos θ cos θ
it follows that tan θ and sec θ are continuous functions. Part (iii) Both cot θ and csc θ are continuous as quotients of two continuous functions where the denominators are not zero for n 6= nπ, n integer.
Exercises 2.1 Evaluate each of the following limits. 1. lim
x→1
x2 − 1 x3 − 1
2. lim
x→0
sin(2x) x
3. lim
sin 5x sin 7x
x→0
4. lim+
x2
1 −4
5. lim−
x2
1 −4
6. lim
x−2 x2 − 4
7. lim+
x−2 |x − 2|
8. lim−
x−2 |x − 2|
9. lim
x−2 |x − 2|
10. lim
x2 − 9 x−3
11. lim
x2 − 9 x+3
12. limπ tan x
x→2
x→2
x→3
x→2
x→2
x→3
x→2
x→2
x→ 2
13. lim tan x π+
14. lim− csc x
15. lim+ csc x
16. lim+ cot x
17. lim− cot x
18. lim sec x π+
19. limπ sec x
sin 2x + sin 3x 20. lim x→0 x
21. lim−
√ x−2 22. lim+ x→4 x−4
√ x−2 23 lim x→4 x−4
24. lim
x→ 2
x→0
x→ 2
x→0
x→0
x→0
x→ 2
√ x→4
x→3
x−2 x−4
x4 − 81 x2 − 9
Sketch the graph of each of the following functions. Determine all the discontinuities of these functions and classify them as (a) removable type, (b) finite jump type, (c) essential type, (d) oscillation type, or other types.
2.2. LINEAR FUNCTION APPROXIMATIONS 25. f (x) = 2
27. f (x) =
x−1 x−2 − |x − 1| |x − 2|
2x for x ≤ 0 2 x + 1 for x > 0
x−1 29. f (x) = (x − 2)(x − 3) Recall the unit step function u(x) =
61
26. f (x) =
x x2 − 9
28. f (x) =
sin x if x ≤ 0 sin x2 if x > 0
30. f (x) =
|x − 1| if x ≤ 1 |x − 2| if x > 1
0 if x < 0 1 if x ≥ 0.
Sketch the graph of each of the following functions and determine the left hand limit and the right hand limit at each point of discontinuity of f and g. 31. f (x) = 2u(x − 3) − u(x − 4) 32. f (x) = −2u(x − 1) + 4u(x − 5) 33. f (x) = u(x − 1) + 2u(x + 1) − 3u(x − 2) h π π i 34. f (x) = sin x u x + −u x− 2 2 h π i π 35. g(x) = (tan x) u x + −u x− 2 2 36. f (x) = [u(x) − u(x − π)] cos x
2.2
Linear Function Approximations
One simple application of limits is to approximate a function f (x), in a small neighborhood of a point c, by a line. The approximating line is called the tangent line. We begin with a review of the equations of a line. A vertical line has an equation of the form x = c. A vertical line has no slope. A horizontal line has an equation of the form y = c. A horizontal line has slope zero. A line that is neither horizontal nor vertical is called an oblique line.
62
CHAPTER 2. LIMITS AND CONTINUITY
Suppose that an oblique line passes through two points, say (x1 , y1 ) and (x2 , y2 ). Then the slope of this line is define as m=
y2 − y1 y1 − y2 = . x2 − x1 x1 − x2
If (x, y) is any arbitrary point on the above oblique line, then m=
y − y2 y − y1 = . x − x1 x − x2
By equating the two forms of the slope m we get an equation of the line: y − y1 y2 − y1 = x − x1 x2 − x1
or
y − y2 y2 − y1 = . x − x2 x2 − x1
On multiplying through, we get the “two point” form of the equation of the line, namely, y − y1 =
y2 − y1 y2 − y1 (x − x1 ) or y − y2 = (x − x2 ). x2 − x1 x2 − x1
Example 2.2.1 Find the equations of the lines passing through the following pairs of points: (i) (4, 2) and (6, 2) (iii) (3, 4) and (5, −2)
(ii) (1, 3) and (1, 5) (iv) (0, 2) and (4, 0).
Part (i) Since the y-coordinates of both points are the same, the line is horizontal and has the equation y = 2. This line has slope 0. Part (ii) Since the x-coordinates of both points are equal, the line is vertical and has the equation x = 1. Part (iii) The slope of the line is given by m=
−2 − 4 = −3. 5−3
The equation of this line is y − 4 = −3(x − 3) or y + 2 = −3(x − 5).
2.2. LINEAR FUNCTION APPROXIMATIONS
63
On solving for y, we get the equation of the line as y = −3x + 13. This line goes through the point (0, 13). The number 13 is called the yintercept. The above equation is called the slope-intercept form of the line.
Example 2.2.2 Determine the equations of the lines satisfying the given conditions: (i) slope = 3, passes through (2, 4) (ii) slope = −2, passes through (1, −3) (iii) slope = m, passes through (x1 , y1 ) (iv) passes through (3, 0) and (0, 4) (v) passes through (a, 0) and (0, b)
Part (i) If (x, y) is on the line, then we equate the slopes and simplify: 3=
y−4 x−2
or y − 4 = 3(x − 2).
Part (ii) If (x, y) is on the line, then we equate slopes and simplify: −2 =
y+3 x−1
or y + 3 = −2(x − 1).
Part (iii) On equating slopes and clearing fractions, we get m=
y − y1 x − x1
or y − y1 = m(x − x1 ).
This form of the line is called the “point-slope” form of the line.
64
CHAPTER 2. LIMITS AND CONTINUITY
Part (iv) Using the two forms of the line we get y−0 4−0 = x−3 0−3
4 or y = − (x − 3). 3
If we divide by 4 we get
x y + = 1. 3 4 The number 3 is called the x-intercept and the number 4 is called the yintercept of the line. This form of the equation is called the “two-intercept” form of the line. Part (v) As in Part (iv), the “two-intercept” form of the line has the equation x y + = 1. a b In order to approximate a function f at the point c, we first define the slope m of the line that is tangent to the graph of f at the point (c, f (c)).
graph
f (x) − f (c) . x→c x−c Then the equation of the tangent line is m = lim
y − f (c) = m(x − c), written in the point-slope form. The point (c, f (c)) is called the point of tangency. This tangent line is called the linear approximation of f about x = c.
Example 2.2.3 Find the equation of the line tangent to the graph of f (x) = x2 at the point (2, 4).
2.2. LINEAR FUNCTION APPROXIMATIONS
65
The slope m of the tangent line at (3, 9) is x2 − 9 x→3 x − 3 = lim (x + 3)
m = lim
x→3
= 6. The equation of the tangent line at (3, 9) is y − 9 = 6(x − 3).
Example √ 2.2.4 Obtain the equation of the line tangent to the graph of f (x) = x at the point (9, 3). The slope m of the tangent line is given by
m = lim
x→9
= lim
x→9
= lim
x→9
= lim
x→9
√ x−3 x−9 √ √ ( x − 3)( x + 3) √ (x − 9)( x + 3) x−9 √ (x − 9)( x + 3) 1 √ x+3
1 = . 6 The equation of the tangent line is 1 y − 3 = (x − 9). 6
Example 2.2.5 Derive the equation of the line tangent to the graph of π 1 , . f (x) = sin x at 6 2 The slope m of the tangent line is given by
66
CHAPTER 2. LIMITS AND CONTINUITY
sin x − sin π6 m = limπ x→ 6 x − π6 x+π/6 x−π/6 2 cos sin 2 2 = limπ x→ 6 (x − π/6) sin x−π/6 2 = cos(π/6) · limπ x→ 6
x−π/6 2
= cos(π/6) √ 3 = . 2 The equation of the tangent line is √ 3 π 1 y− = x− . 2 2 6
Example 2.2.6 Derive the formulas for the slope and the equation of the line tangent to the graph of f (x) = sin x at (c, sin c). As in Example 27, replacing π/6 by c, we get sin x − sin c x−c 2 cos x+c sin x−c 2 2 = lim x→c x−c sin x−c x+c 2 = lim cos · lim x−c x→c x→c 2 2
m = lim
x→c
= cos c.
Therefore the slope of the line tangent to the graph of f (x) = sin x at (c, sin c) is cos c. The equation of the tangent line is y − sin c = (cos c)(x − c).
2.2. LINEAR FUNCTION APPROXIMATIONS
67
Example 2.2.7 Derive the formulas for the slope, m, and the equation of the line tangent to the graph of f (x) = cos x at (c, cos c). Then determine π 1 the slope and the equation of the tangent line at , . 3 2 As in Example 28, we replace the sine function with the cosine function, cos x − cos c x−c −2 sin x+c sin x−c 2 2 = lim x→c x−c sin x−c x+c 2 = lim sin lim x−c x→c x→c 2 2
m = lim
x→c
= − sin(c).
The equation of the tangent line is y − cos c = − sin c(x − c). √ π 3 π =− and the equation of the tangent line For c = , slope = − sin 3 3 2 √ 1 3 π y− =− x− . 2 2 3
Example 2.2.8 Derive the formulas for the slope, m, and the equation of the line tangent to the graph of f (x) = xn at the point (c, cn ), where n is a natural number. Then get the slope and the equation of the tangent line for c = 2, n = 4. By definition, the slope m is given by xn − c n . m = lim x→c x−c To compute this limit for the general natural number n, it is convenient to
68
CHAPTER 2. LIMITS AND CONTINUITY
let x = c + h. Then (c + h)n − cn h→0 h 1 n(n − 1) n−2 2 n n−1 n n = lim c + nc h + c h + ··· + h − c h→0 h 2! 1 n(n − 1) n−2 2 n−1 n = lim nc h + c h + ··· + h h→0 h 2! n(n − 1) n−2 n−1 n−1 = lim nc + c h + ··· + h h→0 2! = ncn−1 .
m = lim
Therefore, the equation of the tangent line through (c, cn ) is y − cn = ncn−1 (x − c). For n = 4 and c = 2, we find the slope, m, and equation for the tangent line to the graph of f (x) = x4 at c = 2: m = 4c3 = 32 y − 24 = 32(x − 2) or y − 16 = 32(x − 2).
Definition 2.2.1 Suppose that a function f is defined on a closed interval [a, b] and a < c < b. Then c is called a critical point of f if the slope of the line tangent to the graph of f at (c, f (c)) is zero or undefined. The slope function of f at c is defined by f (c + h) − f (c) h→0 h f (x) − f (c) = lim . x→c x−c
slope (f (x), c) = lim
Example 2.2.9 Determine the slope functions and critical points of the following functions: (i) f (x) = sin x, 0 ≤ x ≤ 2π (iii) f (x) = |x|, −1 ≤ x ≤ 1
(ii) f (x) = cos x, 0 ≤ x ≤ 2π (iv) f (x) = x3 − 4x, −2 ≤ x ≤ 2
2.2. LINEAR FUNCTION APPROXIMATIONS
69
Part (i) In Example 28, we derived the slope function formula for sin x, namely slope (sin x, c) = cos c. Since cos c is defined for all c, the non-end point critical points on [0, 2π] are π/2 and 3π/2 where the cosine has a zero value. These critical points correspond to the maximum and minimum values of sin x. Part (ii) In Example 29, we derived the slope function formula for cos x, namely slope (cos x, c) = − sin c. The critical points are obtained by solving the following equation for c: − sin c = 0, c = 0, π, 2π.
0 ≤ c ≤ 2π
These values of c correspond to the maximum value of cos x at c = 0 and 2π, and the minimum value of cos x at c = π. Part (iii)
slope (|x|, c) = lim
x→c
|x| − |c| x−c
= lim
|x| − |c| |x| + |c| · x − c |x| + |c|
= lim
x2 − c 2 (x − c)(|x| + |c|)
= lim
x+c |x| + |c|
x→c
x→c
x→c
=
2c 2|c|
c |c| if c > 0 1 −1 if c < 0 = undefined if c = 0 =
70
CHAPTER 2. LIMITS AND CONTINUITY
The only critical point is c = 0, where the slope function is undefined. This critical point corresponds to the minimum value of |x| at c = 0. The slope function is undefined because the tangent line does not exist at c = 0. There is a sharp corner at c = 0. Part (iv) The slope function for f (x) = x3 − 4x is obtained as follows: 1 [((c + h)3 − 4(c + h)) − (c3 − 4c)] h→0 h 1 3 = lim [c + 3c2 h + 3ch2 + h3 − 4c − 4h − c3 + 4c] h→0 h 1 = lim [3c2 h + 3ch2 + h3 − 4h] h→0 h = lim [3c2 + 3ch + h2 − 4]
slope (f (x), c) = lim
h→0 2
= 3c − 4
graph
The critical points are obtained by solving the following equation for c: 3c2 − 4 = 0 2 c = ±√ 3 −2 16 2 At c = √ , f has a local maximum value of √ and at c = √ , f has a 3 3 3 3 −16 local minimum value of √ . The end point (−2, 0) has a local end-point 3 3 minimum and the end point (2, 0) has a local end-point maximum.
Remark 7 The zeros and the critical points of a function are helpful in sketching the graph of a function.
2.2. LINEAR FUNCTION APPROXIMATIONS
71
Exercises 2.2 1. Express the equations of the lines satisfying the given information in the form y = mx + b. (a) Line passing through (2, 4) and (5, −2) (b) Line passing through (1, 1) and (3, 4) (c) Line with slope 3 which passes through (2, 1) (d) Line with slope 3 and y-intercept 4 (e) Line with slope 2 and x-intercept 3 (f) Line with x-intercept 2 and y-intercept 4. 2. Two oblique lines are parallel if they have the same slope. Two oblique lines are perpendicular if the product of their slopes is −1. Using this information, solve the following problems: (a) Find the equation of a line that is parallel to the line with equation y = 3x − 2 which passes through (1, 4). (b) Solve problem (a) when “parallel” is changed to “perpendicular.” (c) Find the equation of a line with y-intercept 4 which is parallel to y = −3x + 1. (d) Solve problem (c) when “parallel” is changed to “perpendicular.” (e) Find the equation of a line that passes through (1, 1) and is (i) parallel to the line with equation 2x − 3y = 6. (ii) perpendicular to the line with equation 3x + 2y = 6 3. For each of the following functions f (x) and values c, (i) derive the slope function, slope (f (x), c) for arbitrary c; (ii) determine the equations of the tangent line and normal line (perpendicular to tangent line) at the point (c, f (c)) for the given c; (iii) determine all of the critical points (c, f (c)). (a) f (x) = x2 − 2x, c = 3 (b) f (x) = x3 , c = 1
72
CHAPTER 2. LIMITS AND CONTINUITY π 12 π (d) f (x) = cos(3x), c = 9 √ √ 4 2 (e) f (x) = x − 4x , c = −2, 0, 2, − 2, 2. (c) f (x) = sin(2x),
2.3
c=
Limits and Sequences
We begin with the definitions of sets, sequences, and the completeness property, and state some important results. If x is an element of a set S, we write x ∈ S, read “x is in S.” If x is not an element of S, then we write x ∈ / S, read “x is not in S.” Definition 2.3.1 If A and B are two sets of real numbers, then we define A ∩ B = {x : x ∈ A and x ∈ B} and A ∪ B = {x : x ∈ A or x ∈ B or both}. We read “A ∩ B” as the “intersection of A and B.” We read “A ∪ B” as the “union of A and B.” If A ∩ B is the empty set, ∅, then we write A ∩ B = ∅. Definition 2.3.2 Let A be a set of real numbers. Then a number m is said to be an upper bound of A if x ≤ m for all x ∈ A. The number m is said to be a least upper bound of A, written lub(A) if and only if, (i) m is an upper bound of A, and, (ii) if q < m, then there is some x ∈ A such that q < x ≤ m. Definition 2.3.3 Let B be a set of real numbers. Then a number ` is said to be a lower bound of B if ` ≤ y for each y ∈ B. This number ` is said to be the greatest lower bound of B, written, glb(b), if and only if, (i) ` is a lower bound of B, and,
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73
(ii) if ` < p, then there is some element y â&#x2C6;&#x2C6; B such that ` â&#x2030;¤ y < p. Definition 2.3.4 A real number p is said to be a limit point of a set S if and only if every open interval that contains p also contains an element q of S such that q 6= p. Example 2.3.1 Suppose A = [1, 10] and B = [5, 15]. Then Aâ&#x2C6;ŠB = [5, 10], Aâ&#x2C6;ŞB = [1, 15], glb(A) = 1, lub(A) = 10, glb(B) = 5 and lub(B) = 15. Each element of A is a limit point of A and each element of B is a limit point of B. 1 : n is a natural number . Example 2.3.2 Let S = n Then no element of S is a limit point of S. The number 0 is the only limit point of S. Also, glb(S) = 0 and lub(S) = 1. Completeness Property: The completeness property of the set R of all real numbers states that if A is a non-empty set of real numbers and A has an upper bound, then A has a least upper bound which is a real number.
Theorem 2.3.1 If B is a non-empty set of real numbers and B has a lower bound, then B has a greatest lower bound which is a real number. Proof. Let m denote a lower bound for B. Then m â&#x2030;¤ x for every x â&#x2C6;&#x2C6; B. Let A = {â&#x2C6;&#x2019;x : x â&#x2C6;&#x2C6; B}. then â&#x2C6;&#x2019;x â&#x2030;¤ â&#x2C6;&#x2019;m for every x â&#x2C6;&#x2C6; B. Hence, A is a non-empty set that has an upper bound â&#x2C6;&#x2019;m. By the completeness property, A has a least upper bound lub(A). Then, -lub(A) = glb(B) and the proof is complete. Theorem 2.3.2 If x1 and x2 are real numbers such that x1 < x2 , then 1 x1 < (x1 + x2 ) < x2 . 2 Proof. We observe that 1 x1 â&#x2030;¤ (x1 + x2 ) < x2 â&#x2020;&#x201D; 2x1 < x1 + x2 < 2x2 2 â&#x2020;&#x201D; x1 < x2 < x2 + (x2 â&#x2C6;&#x2019; x1 ). This completes the proof.
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Theorem 2.3.3 Suppose that A is a non-empty set of real numbers and m = lub(A). If m ∈ / A, then m is a limit point of A. Proof. Let an open interval (a, b) contain m. That is, a < m < b. By the definition of a least upper bound, a is not an upper bound for A. Therefore, there exists some element q of A such that a < q < m < b. Thus, every open interval (a, b) that contains m must contain a point of A other than m. It follows that m is a limit point of A. Theorem 2.3.4 (Dedekind-Cut Property). The set R of all real numbers is not the union of two non-empty sets A and B such that (i) if x ∈ A and y ∈ B, then x < y, (ii) A contains no limit point of B, and, (iii) B contains no limit point of A. Proof. Suppose that R = A ∪ B where A and B are non-empty sets that satisfy conditions (i), (ii) and (iii). Since A and B are non-empty, there exist real numbers a and b such that a ∈ A and b ∈ B. By property (i), a is a lower bound for B and b is an upper bound for A. By the completeness property and theorem 2.3.1, A has a least upper bound, say m, and B has a greatest lower bound, say M . If m ∈ / A, then m is a limit point of A. Since B contains no limit point of A, m ∈ A. Similarly, M ∈ B. It follows that m < M by condition (i). However, by Theorem 2.3.2, 1 m < (m + M ) < M. 2 1 The number (m + M ) is neither in A nor in B. This is a contradiction, 2 because R = A ∪ B. This completes the proof. Definition 2.3.5 An empty set is considered to be a finite set. A non-empty set S is said to be finite if there exists a natural number n and a one-to-one function that maps S onto the set {1, 2, 3, . . . , n}. Then we say that S has n elements. If S is not a finite set, then S is said to be an infinite set. We say that an infinite set has an infinite number of elements. Two sets are said to have the same number of elements if there exists a one-to-one correspondence between them.
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Example 2.3.3 Let A = {a, b, c}, B = {1, 2, 3}, C = {1, 2, 3, . . . }, and D = {0, 1, â&#x2C6;&#x2019;1, 2, â&#x2C6;&#x2019;2, . . . }. In this example, A and B are finite sets and contain three elements each. The sets C and D are infinite sets and have the same number of elements. A one-to-one correspondence f between n, C and D can be defined as f : C â&#x2020;&#x2019; D such that f (1) = 0, f (2n) = n and f (2n + 1) = â&#x2C6;&#x2019;n for n = 1, 2, 3, . . . .
Definition 2.3.6 A set that has the same number of elements as C = {1, 2, 3, . . . } is said to be countable. An infinite set that is not countable is said to be uncountable. Remark 8 The set of all rational numbers is countable but the set of all real numbers is uncountable. Definition 2.3.7 A sequence is a function, say f , whose domain is the set of all natural numbers. It is customary to use the notation f (n) = an , n = 1, 2, 3, . . . . We express the sequence as a list without braces to avoid confusion with the set notation: a1 , a2 , a3 , . . . , an , . . .
or, simply,
{an }â&#x2C6;&#x17E; n=1 .
The number an is called the nth term of the sequence. The sequence is said to converge to the limit a if for every > 0, there exists some natural number, say N , such that |am â&#x2C6;&#x2019; a| < for all m â&#x2030;Ľ N . We express this convergence by writing lim an = a. nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
If a sequence does not converge to a limit, it is said to diverge or be divergent. Example 2.3.4 For each natural number n, let an = (â&#x2C6;&#x2019;1)n , bn = 2â&#x2C6;&#x2019;n , cn = 2n , dn =
(â&#x2C6;&#x2019;1)n . n
The sequence {an } does not converge because its terms oscillate between â&#x2C6;&#x2019;1 and 1. The sequence {bn } converges to 0. The sequence {cn } diverges to â&#x2C6;&#x17E;. The sequence {dn } converges to 0.
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Definition 2.3.8 A sequence {an }â&#x2C6;&#x17E; n=1 diverges to â&#x2C6;&#x17E; if, for every natural number N , there exists some m such that am+j â&#x2030;Ľ N for all j = 1, 2, 3, ¡ ¡ ¡ . The sequence {an }â&#x2C6;&#x17E; n=1 is said to diverge to â&#x2C6;&#x2019;â&#x2C6;&#x17E; if, for every natural number N , there exists some m such that am+j â&#x2030;¤ â&#x2C6;&#x2019;N , for all j = 1, 2, 3, . . . . Theorem 2.3.5 If p is a limit point of a non-empty set A, then every open interval that contains p must contain an infinite subset of A. Proof. Let some open interval (a, b) contain p. Suppose that there are only two finite subsets {a1 , a2 , . . . , an } and {b1 , b2 , . . . , bm } of distinct elements of A such that a < a1 < a2 < ¡ ¡ ¡ < an < p < bm < bmâ&#x2C6;&#x2019;1 < ¡ ¡ ¡ < b1 < b. Then the open interval (an , bm ) contains p but no other points of A distinct from p. Hence p is not a limit point of A. The contradiction proves the theorem. Theorem 2.3.6 If p is a limit point of a non-empty set A, then there exists a sequence {pn }â&#x2C6;&#x17E; n=1 , of distinct points pn of A, that converges to p. 1 1 Proof. Let a1 = p â&#x2C6;&#x2019; , b1 = p + . Choose a point p1 of A such that p1 6= p 2 2 and a1 < p 1 < p < b1 or a1 < p < p1 < b1 . If a1 < p1 < p < b1 , then define 1 1 1 a2 = max p1 , p â&#x2C6;&#x2019; 2 and b2 = p + 2 . Otherwise, define a2 = p â&#x2C6;&#x2019; 2 and 2 2 2 1 b2 = min p1 , p + 2 . Then the open interval (a2 , b2 ) contains p but not p1 2 1 and b2 â&#x2C6;&#x2019; a2 â&#x2030;¤ . We repeat this process indefinitely to select the sequence 2 {pn }, of distinct points pn of A, that converges to p. The fact that {pn } is an infinite sequence is guaranteed by Theorem 2.3.5. This completes the proof. Theorem 2.3.7 Every bounded infinite set A has at least one limit point p and there exists a sequence {pn }â&#x2C6;&#x17E; n=1 , of distinct points of A, that converges to p.
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77
Proof. We will show that A has a limit point. Since A is bounded, there exists an open of A. Then either interval (a, b) that contains all points 1 1 a, (a + b) contains an infinite subset of A or (a + b), b contains an 2 2 infinite subset of A. Pick one of the two intervals that contains an infinite subset of A. Let this interval be denoted (a1 , b1 ). We continue this process repeatedly to get an open interval (an , bn ) that contains an infinite subset of |b − a| . Then the lub of the set {an , a2 , . . . } and glb of A and |bn − an | = 2n the set {b1 , b2 , . . . } are equal to some real number p. It follows that p is a limit point of A. By Theorem 2.3.6, there exists a sequence {pn }, of distinct points of A, that converges to p. This completes the proof. Definition 2.3.9 A set is said to be a closed set if it contains all of its limit points. The complement of a closed set is said to be an open set. (Recall that the complement of A is {x ∈ R : x ∈ / A}.) Theorem 2.3.8 The interval [a, b] is a closed and bounded set. Its complement (−∞, a) ∪ (b, ∞) is an open set. Proof. Let p < a or b < p < ∞. The Then −∞ < p ∈ (−∞, a) ∪ (b, ∞). 1 1 1 1 (b + p), p + contain no limit point of intervals p − , (a + p) or 2 2 2 2 [a, b]. Thus [a, b] must contain its limit points, because they are not in the complement. Theorem 2.3.9 If a non-empty set A has no upper bound, then there exists a sequence {pn }∞ n=1 , of distinct points of A, that diverges to ∞. Furthermore, every subsequence of {pn }∞ n=1 diverges to ∞ Proof. Since 1 is not an upper bound of A, there exists an element p1 of A such that 1 < p1 . Let a1 = max{2, p1 }. Choose a point, say p2 , of A such that a1 < p2 . By repeating this process indefinitely, we get the sequence {pn } such that pn > n and p1 < p2 < p3 < . . . . Clearly, the sequence ∞ {pn }∞ n=1 diverges to ∞. It is easy to see that every subsequence of {pn }n=1 also diverges to ∞. Theorem 2.3.10 If a non-empty set B has no lower bound, then there exists a sequence {qn }∞ n=1 , of distinct points of B, that diverges to −∞. Furthermore, every subsequence of {qn }∞ n=1 diverges to −∞.
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Proof. Let A = {â&#x2C6;&#x2019;x : x â&#x2C6;&#x2C6; B}. Then A has no upper bound. By Theorem 2.3.9, there exists a sequence {pn }â&#x2C6;&#x17E; n=1 , of distinct points of A, that diverges to â&#x2C6;&#x17E; â&#x2C6;&#x17E;. Let qn = â&#x2C6;&#x2019;pn . Then {qn }n=1 is a sequence that meets the requirements of the Theorem 2.3.10. Also, every subsequence of {qn }â&#x2C6;&#x17E; n=1 diverges to â&#x2C6;&#x2019;â&#x2C6;&#x17E;. Theorem 2.3.11 Let {pn }â&#x2C6;&#x17E; n=1 be a sequence of points of a closed set S that converges to a point p of S. If f is a function that is continuous on S, then the sequence {f (pn )}â&#x2C6;&#x17E; n=1 converges to f (p). That is, continuous functions preserve convergence of sequences on closed sets. Proof. Let > 0 be given. Since f is continuous at p, there exists a δ > 0 such that |f (x) â&#x2C6;&#x2019; f (p)| < whenever |x â&#x2C6;&#x2019; p| < δ,
and x â&#x2C6;&#x2C6; S.
The open interval (p â&#x2C6;&#x2019; δ, p + δ) contains the limit point p of S. The sequence {pn }â&#x2C6;&#x17E; n=1 converges to p. There exists some natural numbers N such that for all n â&#x2030;Ľ N , p â&#x2C6;&#x2019; δ < pn < p + δ. Then |f (pn ) â&#x2C6;&#x2019; f (p)| < whenever n â&#x2030;Ľ N. By definition, {f (pn )}â&#x2C6;&#x17E; n=1 converges to f (p). We write this statement in the following notation: lim f (pn ) = f lim pn . nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
That is, continuous functions allow the interchange of taking the limit and applying the function. This completes the proof of the theorem. Corollary 1 If S is a closed and bounded interval [a, b], then Theorem 2.3.11 is valid for [a, b]. Theorem 2.3.12 Let a function f be defined and continuous on a closed and bounded set S. Let Rf = {f (x) : x â&#x2C6;&#x2C6; S}. Then Rf is bounded. Proof. Suppose that Rf has no upper bound. Then there exists a sequence {f (xn )}â&#x2C6;&#x17E; n=1 , of distinct points of Rf , that diverges to â&#x2C6;&#x17E;. The set A = {x1 , x2 , . . . } is an infinite subset of S. By Theorem 2.3.7, the set A has some limit point, say p. Since S is closed, p â&#x2C6;&#x2C6; S. There exists a sequence
2.3. LIMITS AND SEQUENCES
79
{pn }∞ n=1 , of distinct points of A that converges to p. By the continuity of f, {f (pn )}∞ n=1 converges to f (p). Without loss of generality, we may assume ∞ ∞ that {f (pn )}∞ n=1 is a subsequence of {f (xn )}n=1 . Hence {f (pn )}n=1 diverges to ∞, and f (p) = ∞. This is a contradiction, because f (p) is a real number. This completes the proof of the theorem. Theorem 2.3.13 Let a function f be defined and continuous on a closed and bounded set S. Let Rf = {f (x) : x ∈ S}. Then Rf is a closed set. Proof. Let q be a limit point of Rf . Then there exists a sequence {f (xn )}∞ n=1 , of distinct points of Rf , that converges to q. As in Theorem 2.3.12, the set A = {x1 , x2 , . . . } has a limit point p, p ∈ S, and there exists a subsequence ∞ {pn }∞ n=1 , of {xn }n=1 that converges to p. Since f is defined and continuous on S, q = lim f (pn ) = f lim pn = f (p). n→∞
n→∞
Therefore, q ∈ Rf and Rf is a closed set. This completes the proof of the theorem. Theorem 2.3.14 Let a function f be defined and continuous on a closed and bounded set S. Then there exist two numbers c1 and c2 in S such that for all x ∈ S, f (c1 ) ≤ f (x) ≤ f (c2 ). Proof. By Theorems 2.3.12 and 2.3.13, the range, Rf , of f is a closed and bounded set. Let m = glb(Rf ) and M = lub(Rf ). Since Rf is a closed set, m and M are in Rf . Hence, there exist two numbers, say c1 and c2 , in S such that m = f (c1 ) and M = f (c2 ). This completes the proof of the theorem. Definition 2.3.10 A set S of real numbers is said to be compact, if and only if S is closed and bounded. Theorem 2.3.15 A continuous function maps compact subsets of its domain onto compact subsets of its range.
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Proof. Theorems 2.3.13 and 2.3.14 together prove Theorem 2.1.15. Definition 2.3.11 Suppose that a function f is defined and continuous on a compact set S. A number m is said to be an absolute minimum of f on S if m â&#x2030;¤ f (x) for all x â&#x2C6;&#x2C6; S and m = f (c) for some c in S. A number M is said to be an absolute maximum of f on S if M â&#x2030;Ľ f (x) for all x â&#x2C6;&#x2C6; S and M = f (d) for some d in S. Theorem 2.3.16 Suppose that a function f is continuous on a compact set S. Then there exist two points c1 and c2 in S such that f (c1 ) is the absolute minimum and f (c2 ) is the absolute maximum of f on S. Proof. Theorem 2.3.14 proves Theorem 2.3.16. Exercises 2.3 1. Find lub(A), glb(A) and determine all of the limit points of A. (a) A = {x : 1 â&#x2030;¤ x2 â&#x2030;¤ 2} (b) A = {x : x sin(1/x), x > 0} (c) A = {x2/3 : â&#x2C6;&#x2019;8 < x < 8} (d) A = {x : 2 < x3 < 5} (e) A = {x : x is a rational number and 2 < x3 < 5} 2. Determine whether or not the following sequences converge. Find the limit of the convergent sequences. â&#x2C6;&#x17E; n (a) n + 1 n=1 n n oâ&#x2C6;&#x17E; (b) n2 n=1 â&#x2C6;&#x17E; n n (c) (â&#x2C6;&#x2019;1) 3n + 1 n=1 2 â&#x2C6;&#x17E; n (d) n + 1 n=1 (e) {1 + (â&#x2C6;&#x2019;1)n }â&#x2C6;&#x17E; n=1
2.3. LIMITS AND SEQUENCES
81
3. Show that the Dedekind-Cut Property is equivalent to the completeness property. 4. Show that a convergent sequence cannot have more than one limit point. 5. Show that the following principle of mathematical induction is valid: If 1 ∈ S, and k + 1 ∈ S whenever k ∈ S, then S contains the set of all natural numbers. (Hint: Let A = {n : n ∈ / S}. A is bounded from below by 2. Let m = glb(A). Then k = m − 1 ∈ S but k + 1 = m ∈ / S. This is a contradiction.) 6. Prove that every rational number is a limit point of the set of all rational numbers. 7. Let {an }∞ n=1 be a sequence of real numbers. Then (i) {an }∞ n=1 is said to be increasing if an < an+1 , for all n. (ii) {an }∞ n=1 is said to be non-decreasing if an ≤ an+1 for all n. (iii) {an }∞ n=1 is said to be non-increasing if an ≥ an+1 for all n. (iv) {an }∞ n=1 is said to be decreasing if an > an+1 for all n. (v) {an }∞ n=1 is said to be monotone if it is increasing, non-decreasing, non-increasing or decreasing. (a) Determine which sequences in Exercise 2 are monotone. (b) Show that every bounded monotone sequence converges to some point. ∞ (c) A sequence {bm }∞ m=1 is said to be a subsequence of the {an }n=1 if and only if every bm is equal to some an , and if
bm1 = an1
and bm2 = an2
and n1 < n2 , then m1 < m2 .
That is, a subsequence preserves the order of the parent sequence. Show that if {an }∞ n=1 converges to p, then every subsequence of ∞ {an }n=1 also converges to p (d) Show that a divergent sequence may contain one or more convergent sequences.
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CHAPTER 2. LIMITS AND CONTINUITY (e) In problems 2(c) and 2(e), find two convergent subsequences of each. Do the parent sequences also converge?
8. (Cauchy Criterion) A sequence {an }â&#x2C6;&#x17E; n=1 is said to satisfy a Cauchy Criterion, or be a Cauchy sequence, if and only if for every > 0, there exists some natural number N such that (an â&#x2C6;&#x2019; am ) < whenever n â&#x2030;Ľ N and m â&#x2030;Ľ N . Show that a sequence {an }â&#x2C6;&#x17E; n=1 converges if and only if it is a Cauchy sequence. (Hint: (i) If {an } converges to p, then for every > 0 there exists some N such that if n â&#x2030;Ľ N , then |an â&#x2C6;&#x2019; p| < /2. If m â&#x2030;Ľ N and n â&#x2030;Ľ N , then |an â&#x2C6;&#x2019; am | = |(an â&#x2C6;&#x2019; p) + (p â&#x2C6;&#x2019; am )| â&#x2030;¤ |an â&#x2C6;&#x2019; p| + |am â&#x2C6;&#x2019; p| < + = . 2 2 So, if {an } converges, then it is Cauchy.
(why?)
(ii) Suppose {an } is Cauchy. Let > 0. Then there exists N > 0 such that |an â&#x2C6;&#x2019; am | < whenever n â&#x2030;Ľ N and m â&#x2030;Ľ N. In particular, |an â&#x2C6;&#x2019; aN | < whenever n â&#x2030;Ľ N. Argue that the sequence {an } is bounded. Unless an element is repeated infinitely many times, the set consisting of elements of the sequence has a limit point. Either way, it has a convergent subsequence that converges, say to p. Then show that the Cauchy Criterion forces the parent sequence {an } to converge to p also.) 9. Show that the set of all rational numbers is countable. (Hint: First show that the positive rationals are countable. List them in reduced form without repeating according to denominators, as follows: 0 1 2 3 4 , , , , ,¡¡¡ . 1 1 1 1 1 1 3 5 2 , , , ,¡¡¡ . 2 2 2 2 1 2 4 5 7 8 10 , , , , , , ,¡¡¡ . 3 3 3 3 3 3 3
2.3. LIMITS AND SEQUENCES Count them as shown, one-by-one. That is, 1 1 3 5 2 0, 1, , , , 2, 3, , , 2 3 2 2 3
83 list them as follows: 1 1 , ,¡¡¡ . 4 5
Next, insert the negative rational right after its absolute value, as follows: 1 1 1 1 0, 1, â&#x2C6;&#x2019;1, , â&#x2C6;&#x2019; , , â&#x2C6;&#x2019; , ¡ ¡ ¡ . 2 2 3 3 Now assign the even natural numbers to the positive rationals and the odd natural numbers to the remaining rationals.) 10. A non-empty set S has the property that if x â&#x2C6;&#x2C6; S, then there is some open interval (a, b) such that x â&#x2C6;&#x2C6; (a, b) â&#x160;&#x201A; S. Show that the complement of S is closed and hence S is open. â&#x2C6;&#x17E; Ď&#x20AC; (â&#x2C6;&#x2019;1)n . Determine the conver11. Consider the sequence an = + 2 n n=1 gent or divergent properties of the following sequences: (a) {sin(an )}â&#x2C6;&#x17E; n=1 (b) {cos(an )}â&#x2C6;&#x17E; n=1 (c) {tan(an )}â&#x2C6;&#x17E; n=1 (d) {cot(an )}â&#x2C6;&#x17E; n=1 (e) {sec(an )}â&#x2C6;&#x17E; n=1 (f) {csc(an )}â&#x2C6;&#x17E; n=1 12. Let (a) f (x) = x2 , â&#x2C6;&#x2019;2 â&#x2030;¤ x â&#x2030;¤ 2 (b) g(x) = x3 , â&#x2C6;&#x2019;2 â&#x2030;¤ x â&#x2030;¤ 2 â&#x2C6;&#x161; (c) h(x) = x, 0 â&#x2030;¤ x â&#x2030;¤ 4 (d) p(x) = x1/3 , â&#x2C6;&#x2019;8 â&#x2030;¤ x â&#x2030;¤ 8 Find the absolute maximum and absolute minimum of each of the functions f, g, h, and p. Determine the points at which the absolute maximum and absolute minimum are reached.
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13. A function f is said to have a fixed point p if f (p) = p. Determine all of the fixed points of the functions f, g, h, and p in Exercise 12. 14. Determine the range of each of the functions in Exercise 12, and show that it is a closed and bounded set.
2.4
Properties of Continuous Functions
We recall that if two functions f and g are defined and continuous on a common domain D, then f + g, f â&#x2C6;&#x2019; g, af + bg, g ¡ f are all continuous on D, for all real numbers a and b. Also, the quotient f /g is continuous for all x in D where g(x) 6= 0. In section 2.3 we proved the following: (i) Continuous functions preserve convergence of sequences. (ii) Continuous functions map compact sets onto compact sets. (iii) If a function f is continuous on a closed and bounded interval [a, b], then {f (x) : x â&#x2C6;&#x2C6; [a, b]} â&#x160;&#x2020; [m, M ], where m and M are absolute minimum and absolute maximum of f , on [a, b], respectively.
Theorem 2.4.1 Suppose that a function f is defined and continuous on some open interval (a, b) and a < c < b. (i) If f (c) > 0, then there exists some δ > 0 such that f (x) > 0 whenever c â&#x2C6;&#x2019; δ < x < c + δ. (ii) If f (c) < 0, then there exists some δ > 0 such that f (x) < 0 whenever c â&#x2C6;&#x2019; δ < x < c + δ. 1 |f (c)|. For both cases (i) and (ii), > 0. Since f is 2 continuous at c and > 0, there exists some δ > 0 such that a < (c â&#x2C6;&#x2019; δ) < c < (c + δ) < b and Proof.
Let =
|f (x) â&#x2C6;&#x2019; f (c)| < whenever |x â&#x2C6;&#x2019; c| < δ.
2.4. PROPERTIES OF CONTINUOUS FUNCTIONS
85
We observe that |f (x) â&#x2C6;&#x2019; f (c)| < â&#x2020;&#x201D; |f (x) â&#x2C6;&#x2019; f (c)| <
1 |f (c)| 2
1 1 |f (c)| < f (x) â&#x2C6;&#x2019; f (c) < |f (c)| 2 2 1 1 â&#x2020;&#x201D; f (c) â&#x2C6;&#x2019; |f (c)| < f (x) < f (c) + |f (c)|. 2 2 â&#x2020;&#x201D;â&#x2C6;&#x2019;
1 1 |f (c)| and f (c) + |f (c)| have the 2 2 same sign as f (c). Therefore, for all x such that |xâ&#x2C6;&#x2019;c| < δ, we have f (x) > 0 in part (i) and f (x) < 0 in part (ii) as required. This completes the proof.
We note also that the numbers f (c) â&#x2C6;&#x2019;
Theorem 2.4.2 Suppose that a function f is defined and continuous on some closed and bounded interval [a, b] such that either (i)
f (a) < 0 < f (b)
or
(ii)
f (b) < 0 < f (a).
Then there exists some c such that a < c < b and f (c) = 0. Proof. Part (i) Let A {x : x â&#x2C6;&#x2C6; [a, b] and f (x) < 0}. Then A is nonempty because it contains a. Since A is a subset of [a, b], A is bounded. Let c1 = lub(A). We claim that f (c1 ) = 0. Suppose f (c1 ) 6= 0. Then f (c1 ) > 0 or f (c1 ) < 0. By Theorem 2.4.1, there exists δ > 0 such that f (x) has the same sign as f (c1 ) for all x such that c1 â&#x2C6;&#x2019; δ < x < c1 + δ. If f (c1 ) < 0, then f (x) < 0 for all x such that c1 < x < c1 + δ and hence c1 6= lub(A). If f (c1 ) > 0, then f (x) > 0 for all x such that c1 â&#x2C6;&#x2019; δ < x < c1 and hence c1 6= lub(A). This contradiction proves that f (c1 ) = 0. Part (ii) is proved by a similar argument.
Example 2.4.1 Show that Theorem 2.4.2 guarantees the validity of the following method of bisection for finding zeros of a continuous function f : Bisection Method: We wish to solve f (x) = 0 for x. Step 1. Locate two points such that f (a)f (b) < 0. 1 (a + b) . Step 2. Determine the sign of f 2
86
CHAPTER 2. LIMITS AND CONTINUITY
1 1 (i) If f (a + b) = 0, stop the procedure; (a + b) is a zero of f . 2 2 1 1 (ii) If f (a + b) · f (a) < 0, then let a1 = a, b1 = (a + b). 2 2 1 1 (iii) If f (a + b) · f (b) < 0, then let a1 = (a + b), b1 = b. 2 2 1 (b − a). 2 Step 3. Repeat Step 2 and continue the loop between Step 2 and Step 3 until Then f (a1 ) · f (b1 ) < 0, and |b1 − a1 | =
|bn − an |/2n < Tolerance Error. Then stop. This method is slow but it approximates the number c guaranteed by Theorem 2.4.2. This method is used to get close enough to the zero. The switchover to the faster Newton’s Method that will be discussed in the next section.
Theorem 2.4.3 (Intermediate Value Theorem). Suppose that a function is defined and continuous on a closed and bounded interval [a, b]. Suppose further that there exists some real number k such that either (i) f (a) < k < f (b) or (ii) f (b) < k < f (a). Then there exists some c such that a < c < b and f (c) = k. Proof. Let g(x) = f (x) − k. Then g is continuous on [a, b] and either (i) g(a) < 0 < g(b) or (ii) g(b) < 0 < g(a). By Theorem 2.4.2, there exists some c such that a < c < b and g(c) = 0. Then 0 = g(c) = f (c) − k and f (c) = k as required. This completes the proof.
2.4. PROPERTIES OF CONTINUOUS FUNCTIONS
87
Theorem 2.4.4 Suppose that a function f is defined and continuous on a closed and bounded interval [a, b]. Then there exist real numbers m and M such that [m, M ] = {f (x) : a ≤ x ≤ b}. That is, a continuous function f maps a closed and bounded interval [a, b] onto a closed and bounded interval [m, M ]. Proof. By Theorem 2.3.14, there exist two numbers c1 and c2 in [a, b] such that for all x ∈ [a, b], m = f (c1 ) ≤ f (x) ≤ f (c2 ) = M. By the Intermediate Value Theorem (2.4.3), every real value between m and M is in the range of f contained in the interval with end points c1 and c2 . Therefore, [m, M ] = {f (x) : a ≤ x ≤ b}. Recall that m = absolute minimum and M = absolute maximum of f on [a, b]. This completes the proof of the theorem. Theorem 2.4.5 Suppose that a function f is continuous on an interval [a, b] and f has an inverse on [a, b]. Then f is either strictly increasing on [a, b] or strictly decreasing on [a, b]. Proof. Since f has in inverse on [a, b], f is a one-to-one function on [a, b]. So, f (a) 6= f (b). Suppose that f (a) < f (b). Let A = {x : f is strictly increasing on [a, x] and a ≤ x ≤ b}. Let c be the least upper bound of A. If c = b, then f is strictly increasing on [a, b] and the proof is complete. If c = a, then there exists some d such that a < d < b and f (d) < f (a) < f (b). By the intermediate value theorem there must exist some x such that d < x < b and f (x) = f (a). This contradicts the fact that f is one-to-one. Then a < c < b and there exists some d such that c < d < b and f (a) < f (d) < f (c). By the intermediate value theorem there exists some x such that a < x < c and f (x) = f (c) and f is not one-to-one. It follows that c must equal b and f is strictly increasing on [a, b]. Similarly, if f (a) > f (b), f will be strictly decreasing on [a, b]. This completes the proof of the theorem.
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CHAPTER 2. LIMITS AND CONTINUITY
Theorem 2.4.6 Suppose that a function f is continuous on [a, b] and f is one-to-one on [a, b]. Then the inverse of f exists and is continuous on J = {f (x) : a â&#x2030;¤ x â&#x2030;¤ b}. Proof. By Theorem 2.4.4, J = [m, M ] where m and M are the absolute minimum and the absolute maximum of f on [a, b]. Also, there exist numbers c1 and c2 on [a, b] such that f (c1 ) = m and f (c2 ) = M . Since f is either strictly increasing or strictly decreasing on [a, b], either a = c1 and b = c2 or a = c2 and b = c1 . Consider the case where f is strictly increasing and a = c1 , b = c2 . Let m < d < M and d = f (c). Then a < c < b. We show that f â&#x2C6;&#x2019;1 is continuous at d. Let > 0 be such that a < c â&#x2C6;&#x2019; < c < c + 2b. Let d1 = f (c â&#x2C6;&#x2019; ), d2 = f (c + ). Since f is strictly increasing, d1 < d < d2 . Let δ = min(d â&#x2C6;&#x2019; d1 , d2 â&#x2C6;&#x2019; d). It follows that if 0 < |y â&#x2C6;&#x2019; d| < δ, then |f â&#x2C6;&#x2019;1 (y) â&#x2C6;&#x2019; f â&#x2C6;&#x2019;1 (d)| < and f â&#x2C6;&#x2019;1 is continuous at d. Similarly, we can prove the one-sided continuity of f â&#x2C6;&#x2019;1 at m and M . A similar argument will prove the continuity of f â&#x2C6;&#x2019;1 if f is strictly decreasing on [a, b]. Theorem 2.4.7 Suppose that a function f is continuous on an interval I and f is one-to-one on I. Then the inverse of f exists and is continuous on I. Proof. Let J = {f (x) : x is in I}. By the intermediate value theorem J is also an interval. Let d be an interior point of J. Then there exists a closed interval [m, M ] contained in I and m < d < M . Let c1 = f â&#x2C6;&#x2019;1 (m), c2 = f â&#x2C6;&#x2019;1 (b), a = min{c1 , c2 } Since the theorem is valid on [a, b], f â&#x2C6;&#x2019;1 is continuous at d. The end points can be treated in a similar way. This completes the proof of the theorem. (See the proof of Theorem 2.4.6). Theorem 2.4.8 (Fixed Point Theorem). Let f satisfy the conditions of Theorem 2.4.4. Suppose further that a â&#x2030;¤ m â&#x2030;¤ M â&#x2030;¤ b, where m and M are the absolute minimum and absolute maximum, respectively, of f on [a, b]. Then there exists some p â&#x2C6;&#x2C6; [a, b] such that f (p) = p. That is, f has a fixed point p on [a, b]. Proof. If f (a) = a, then a is a fixed point. If f (b) = b, then b is a fixed point. Suppose that neither a nor b is a fixed point of f . Then we define g(x) = f (x) â&#x2C6;&#x2019; x for all x â&#x2C6;&#x2C6; [a, b].
2.4. PROPERTIES OF CONTINUOUS FUNCTIONS
89
We observe that g(b) < 0 < g(a). By the Intermediate Value Theorem (2.4.3) there exists some p such that a < p < b and g(p) = 0. Then 0 = g(p) = f (p) − p and hence, f (p) = p and p is a fixed point of f on [a, b]. This completes the proof. Remark 9 The Fixed Point Theorem (2.4.5) is the basis of the fixed point iteration methods that are used to locate zeros of continuous functions. We illustrate this concept by using Newton’s Method as an example. Example 2.4.2 Consider f (x) = x3 + 4x − 10. Since f (1) = −5 and f (2) = 6, by the Intermediate Value Theorem (2.4.3) there is some c such that 1 < c < 2 and f (c) = 0. We construct a function g whose fixed points agree with the zeros of f . In Newton’s Method we used the following general formula: g(x) = x −
f (x) . slope(f (x), x)
Note that if f (x) = 0, then g(x) = x, provided slope (f (x), x) 6= 0. We first compute 1 [f (x + h) − f (x)] h→0 h 1 = lim [{(x + h)3 + 4(x + h) − 10} − {x3 + 4x − 10}] h→0 h 1 = lim [3x2 h + 3xh2 + h3 + 4h] h→0 h = lim [3x2 + 3xh + h2 + 4]
Slope(f (x), x) = lim
h→0 2
= 3x + 4. We note that 3x2 + 4 is never zero. So, Newton’s Method is defined. The fixed point iteration is defined by the equation xn+1 = g(xn ) = xn −
f (xn ) slope(f (x), xn )
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CHAPTER 2. LIMITS AND CONTINUITY
or xn+1 = xn −
x3n + 4xn − 10 . 3x2n + 4
Geometrically, we draw a tangent line at the point (xn , f (xn )) and label the x-coordinate of its point of intersection with the x-axis as xn+1 .
graph
Tangent line:
y − f (xn ) = m(x − xn ) 0 − f (xn ) = m(xn+1 − xn ) xn+1 = xn −
f (xn ) m
,
where m = slope (f (x), xn ) = 3x2n + 4. To begin the iteration we required a guess x0 . This guess is generally obtained by using a few steps of the Bisection Method described in Example 36. Let x0 = 1.5. Next, we need a stopping rule. Let us say that we will stop when a few digits of xn do not change anymore. Let us stop when |xn+1 − xn | < 10−4 . We will leave the computation of x1 , x2 , x3 , . . . as an exercise.
Remark 10 Newton’s Method is fast and quite robust as long as the initial guess is chosen close enough to the intended zeros. Example 2.4.3 Consider the same equation (x3 + 4x − 10 = 0) as in the preceding example. We solve for x in some way, such as, 1/2 10 = g(x). x= 4+x
2.4. PROPERTIES OF CONTINUOUS FUNCTIONS
91
In this case the new equation is good enough for positive roots. We then define xn+1 = g(xn ), x0 = 1.5 and stop when |xn+1 − xn | < 10−4 . We leave the computations of x1 , x2 , x3 . . . as an exercise. Try to compare the number of iterations needed to get the same accuracy as Newton’s Method in the previous example.
Exercises 2.4 1. Perform the required iterations in the last two examples to approximate the roots of the equation x3 + 4x − 10 = 0. h πi 2. Let f (x) = x − cos x. Then slope (f (x), x) = 1 + sin x > 0 on 0, . 2 h πi Approximate the zeros of f (x) on 0, by Newton’s Method: 2 xn+1 = xn −
xn − cos xn , x0 = 0.8 1 + sin xn
and stop when |xn+1 − xn | < 10−4 .
h πi 3. Let f (x) = x − 0.8 − 0.4 sin x on 0, . then slope (f (x), x) = 1 − 2 h πi 0.4 cos x > 0 on 0, . Approximate the zero of f using Newton’s 2 Iteration xn − 0.8 − 0.4 sin(xn ) , x0 = 0.5 xn+1 = xn − 1 − 0.4 cos(xn )
4. To avoid computing the slope function f , the Secant Method of iteration uses the slope of the line going through the previous two points
92
CHAPTER 2. LIMITS AND CONTINUITY (xn , f (xn )) and (xn+1 , f (xn+1 )) to define xn+2 as follows: Given x0 and x1 , we define xn+2 = xn+1 −
xn+2 = xn+1 −
f (xn+1 ) f (xn+1 )−f (xn ) xn+1 −xn
f (xn+1 )(xn+1 − xn ) f (xn+1 − f (xn )
This method is slower than Newton’s Method, but faster than the Bisection. The big advantage is that we do not need to compute the slope function for f . The stopping rule can be the same as in Newton’s Method. Use the secant Method for Exercises 2 and 3 with x0 = 0.5, x1 = 0.7 and |xn+1 − xn | < 10−4 . Compare the number of iterations needed with Newton’s Method. 5. Use the Bisection Method to compute the zero of x3 +4x−10 on [1, 2] and compare the number of iterations needed for the stopping rule |xn+1 − xn | < 10−4 . 6. A set S is said to be connected if S is not the union of two non-empty sets A and B such that A contains no limit point of B and B contains no limit point of A. Show that every closed and bounded interval [a, b] is connected. (Hint: Assume that [a, b] is not connected and [a, b] = A ∪ B, a ∈ A, B 6= ∅ as described in the problem. Let m = lub(A), M = glb(B). Argue 1 / (A ∪ B). The contradiction that m ∈ A and m ∈ B. Then (m + M ) ∈ 2 proves the result. 7. Show that the Intermediate Value Theorem (2.4.3) guarantees that continuous functions map connected sets onto connected sets. (Hint: Let S be connected and f be continuous on S. Let Rf = {f (x) : x ∈ S}. Suppose Rf = A ∪ B, A 6= ∅, B 6= ∅, such that A contains no limit point of B and B contains no limit point of A. Let U = {x ∈ S : f (x) ∈ A}, V = {x ∈ S : f (x) ∈ B}. Then S = U ∪ V, U 6= ∅ and V 6= ∅. Since S is connected, either U contains a limit point of V or V contains a limit point of U . Suppose p ∈ V and p is a limit point of U . Then choose a
2.4. PROPERTIES OF CONTINUOUS FUNCTIONS
93
sequence {un } that converges to p, un â&#x2C6;&#x2C6; U . By continuity, {f (un )} converges to f (p). But f (un ) â&#x2C6;&#x2C6; A and f (p) â&#x2C6;&#x2C6; B. This is a contradiction.) 8. Find all of the fixed points of the following: (a) f (x) = x2 ,
â&#x2C6;&#x2019;4 â&#x2030;¤ x â&#x2030;¤ 4
(b) f (x) = x3 ,
â&#x2C6;&#x2019;2 â&#x2030;¤ x â&#x2030;¤ 2
(c) f (x) = x2 + 3x + 1 (d) f (x) = x3 â&#x2C6;&#x2019; 3x,
â&#x2C6;&#x2019;4 â&#x2030;¤ x â&#x2030;¤ 4
(e) f (x) = sin x 9. Determine which of the following sets are (i) bounded, (ii) closed, (iii) connected. (a) N = {1, 2, 3, . . . , } (b) Q = {x : x is rational number} (c) R = {x : x is a real number} (d) B1 = {sin x : â&#x2C6;&#x2019;Ï&#x20AC; â&#x2030;¤ x â&#x2030;¤ Ï&#x20AC;} (e) B2 = {sin x : â&#x2C6;&#x2019;Ï&#x20AC; < x < Ï&#x20AC;} Ï&#x20AC; â&#x2C6;&#x2019;Ï&#x20AC; <x< (f) B3 = sin x : 2 2 Ï&#x20AC; â&#x2C6;&#x2019;Ï&#x20AC; (g) B4 = tan x : <x< 2 2 (h) C1 = [(â&#x2C6;&#x2019;1, 0) â&#x2C6;ª (0, 1] sin x (i) C2 = f (x) : â&#x2C6;&#x2019;Ï&#x20AC; â&#x2030;¤ x â&#x2030;¤ Ï&#x20AC;, f (x) = , x 6= 0; f (0) = 2 x 1 â&#x2C6;&#x2019; cos x , g(0) = 1 (j) C3 = g(x) : â&#x2C6;&#x2019;Ï&#x20AC; â&#x2030;¤ x â&#x2030;¤ Ï&#x20AC;, g(x) = x 10. Suppose f is continuous on the set of all real numbers. Let the open interval (c, d) be contained in the range of f . Let A = {x : c < f (x) < d}.
94
CHAPTER 2. LIMITS AND CONTINUITY Show that A is an open set. (Hint: Let p â&#x2C6;&#x2C6; A. Then f (p) â&#x2C6;&#x2C6; (c, d). Choose > 0 such that c < p â&#x2C6;&#x2019; < p + < d. Since f is continuous at p, there is δ > 0 such that |f (x)â&#x2C6;&#x2019;f (p)| < whenever |xâ&#x2C6;&#x2019;p| < δ. This means that the open interval (p â&#x2C6;&#x2019; δ, p + δ) is contained in A. By definition, A is open. This proves that the inverse of a continuous function maps an open set onto an open set.)
2.5
Limits and Infinity
The convergence of a sequence {an }â&#x2C6;&#x17E; n=1 depends on the limit of an as n tends to â&#x2C6;&#x17E;. Definition 2.5.1 Suppose that a function f is defined on an open interval (a, b) and a < c < b. Then we define the following limits: (i) limâ&#x2C6;&#x2019; f (x) = +â&#x2C6;&#x17E; xâ&#x2020;&#x2019;c
if and only if for every M > 0 there exists some δ > 0 such that f (x) > M whenever c â&#x2C6;&#x2019; δ < x < c. (ii) lim+ f (x) = +â&#x2C6;&#x17E; xâ&#x2020;&#x2019;c
if and only if for every M > 0 there exists some δ > 0 such that f (x) > M whenever c < x < c + δ. (iii) lim f (x) = +â&#x2C6;&#x17E; xâ&#x2020;&#x2019;c
if and only if for every M > 0 there exists some δ > 0 such that f (x) > M whenever 0 < |x â&#x2C6;&#x2019; c| < δ. (iv) lim f (x) = â&#x2C6;&#x2019;â&#x2C6;&#x17E; xâ&#x2020;&#x2019;c
if and only if for every M > 0 there exists some δ > 0 such that f (x) < â&#x2C6;&#x2019;M whenever 0 < |x â&#x2C6;&#x2019; c| < δ. (v) lim+ f (x) = â&#x2C6;&#x2019;â&#x2C6;&#x17E; xâ&#x2020;&#x2019;c
if and only if for every M > 0 there exists some δ > 0 such that f (x) < â&#x2C6;&#x2019;M whenever c < x < c + δ.
2.5. LIMITS AND INFINITY
95
(vi) limâ&#x2C6;&#x2019; f (x) = â&#x2C6;&#x2019;â&#x2C6;&#x17E; xâ&#x2020;&#x2019;c
if and only if for every M > 0 there exists some δ > 0 such that f (x) < â&#x2C6;&#x2019;M whenever c â&#x2C6;&#x2019; δ < x < c. Definition 2.5.2 Suppose that a function f is defined for all real numbers. (i) lim f (x) = L xâ&#x2020;&#x2019;+â&#x2C6;&#x17E;
if and only if for every > 0 there exists some M > 0 such that |f (x) â&#x2C6;&#x2019; L| < whenever x > M . (ii) lim f (x) = L xâ&#x2020;&#x2019;â&#x2C6;&#x2019;â&#x2C6;&#x17E;
if and only if for every > 0 there exists some M > 0 such that |f (x) â&#x2C6;&#x2019; L| < whenever x < â&#x2C6;&#x2019;M . (iii) lim f (x) = â&#x2C6;&#x17E; xâ&#x2020;&#x2019;+â&#x2C6;&#x17E;
if and only if for every M > 0 there exists some N > 0 such that f (x) > M whenever x > N . (iv) lim f (x) = â&#x2C6;&#x2019;â&#x2C6;&#x17E; xâ&#x2020;&#x2019;+â&#x2C6;&#x17E;
if and only if for every M > 0 there exists some N > 0 such that f (x) < â&#x2C6;&#x2019;M whenever x > M . (v) lim f (x) = â&#x2C6;&#x17E; xâ&#x2020;&#x2019;â&#x2C6;&#x2019;â&#x2C6;&#x17E;
if and only if for every M > 0 there exists some N > 0 such that f (x) > M whenever x < â&#x2C6;&#x2019;N . (vi) lim f (x) = â&#x2C6;&#x2019;â&#x2C6;&#x17E; xâ&#x2020;&#x2019;â&#x2C6;&#x2019;â&#x2C6;&#x17E;
if and only if for every M > 0 there exists some N > 0 such that f (x) < â&#x2C6;&#x2019;M whenever x < â&#x2C6;&#x2019;N . Definition 2.5.3 The vertical line x = c is called a vertical asymptote to the graph of f if and only if either (i) lim f (x) = â&#x2C6;&#x17E; or â&#x2C6;&#x2019;â&#x2C6;&#x17E;; or xâ&#x2020;&#x2019;c
(ii) limâ&#x2C6;&#x2019; f (x) = â&#x2C6;&#x17E; or â&#x2C6;&#x2019;â&#x2C6;&#x17E;; or both. xâ&#x2020;&#x2019;c
96
CHAPTER 2. LIMITS AND CONTINUITY
Definition 2.5.4 The horizontal line y = L is a horizontal asymptote to the graph of f if and only if lim f (x) = L or lim f (x) = L, or both.
x→∞
x→−∞
Example 2.5.1 Compute the following limits: (i) lim
x→∞
(iii) lim
x→∞
(v) lim
x→−∞
sin x x
(ii) lim
x2 + 1 3x3 + 10
(iv) lim
x3 − 2 3x3 + 2x − 3
(vi) lim
−x4 + 3x − 10 2x2 + 3x − 5
x→∞
cos x x
x→−∞
3x3 + 4x − 7 2x2 + 5x + 2
x→−∞
(i) We observe that −1 ≤ sin x ≤ 1 and hence 0 = lim
x→∞
sin x 1 −1 ≤ lim ≤ lim = 0. x→∞ x→∞ x x x
Hence, y = 0 is the horizontal asymptote and lim
x→∞
sin x = 0. x
(ii) −1 ≤ cos x ≤ 1 and, by a similar argument as in part (i), lim
x→∞
cos x = 0. x
(iii) We divide the numerator and denominator by x2 and then take the limit as follows: 1 + 1/x2 x2 + 1 = lim = 0. lim x→∞ 3x + 10/x2 x→∞ 3x3 + 10
2.5. LIMITS AND INFINITY
97
(iv) We divide the numerator and denominator by x3 and then take the limit as follows: lim
xâ&#x2020;&#x2019;â&#x2C6;&#x2019;â&#x2C6;&#x17E;
x3 â&#x2C6;&#x2019; 2 1 â&#x2C6;&#x2019; 2/x3 1 = lim = . 3 2 3 3x + 2x â&#x2C6;&#x2019; 3 xâ&#x2020;&#x2019;â&#x2C6;&#x2019;â&#x2C6;&#x17E; 3 + 2/x â&#x2C6;&#x2019; 3/x 3
(v) We divide the numerator and denominator by x2 and then take the limit as follows: lim
xâ&#x2020;&#x2019;â&#x2C6;&#x2019;â&#x2C6;&#x17E;
3x + 4/x â&#x2C6;&#x2019; 7/x2 3x3 + 4x â&#x2C6;&#x2019; 7 = lim = â&#x2C6;&#x2019;â&#x2C6;&#x17E;. 2x2 + 5x â&#x2C6;&#x2019; 2 xâ&#x2020;&#x2019;â&#x2C6;&#x2019;â&#x2C6;&#x17E; 2 + 5/x + 2/x2
(vi) We divide the numerator and denominator by x2 and then take the limit as follows: lim
xâ&#x2020;&#x2019;â&#x2C6;&#x2019;â&#x2C6;&#x17E;
â&#x2C6;&#x2019;x2 + 3/x â&#x2C6;&#x2019; 10/x2 â&#x2C6;&#x2019;x4 + 3x â&#x2C6;&#x2019; 10 = lim = â&#x2C6;&#x2019;â&#x2C6;&#x17E;. xâ&#x2020;&#x2019;â&#x2C6;&#x2019;â&#x2C6;&#x17E; 2x2 + 3x â&#x2C6;&#x2019; 5 2 + 3/x â&#x2C6;&#x2019; 5/x2
Example 2.5.2 (â&#x2C6;&#x2019;1)n + 1 =0 nâ&#x2020;&#x2019;â&#x2C6;&#x17E; n 2 n n2 n3 + 4n2 â&#x2C6;&#x2019; n3 â&#x2C6;&#x2019; 3n2 (ii) lim â&#x2C6;&#x2019; = lim nâ&#x2020;&#x2019;â&#x2C6;&#x17E; nâ&#x2020;&#x2019;â&#x2C6;&#x17E; n+3 n+4 n2 + 7n + 12 (i) lim
n2 = lim 2 nâ&#x2020;&#x2019;â&#x2C6;&#x17E; n + 7n + 12 = lim
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
1 1 + 7/n + 12/n2
=1 â&#x2C6;&#x161; â&#x2C6;&#x161; â&#x2C6;&#x161; â&#x2C6;&#x161; â&#x2C6;&#x161; ( n + 4 â&#x2C6;&#x2019; n)( n + 4 + n) â&#x2C6;&#x161; (iii) lim ( n + 4 â&#x2C6;&#x2019; n) = lim â&#x2C6;&#x161; nâ&#x2020;&#x2019;â&#x2C6;&#x17E; nâ&#x2020;&#x2019;â&#x2C6;&#x17E; ( n + 4 + n) 4 = lim â&#x2C6;&#x161; â&#x2C6;&#x161; nâ&#x2020;&#x2019;â&#x2C6;&#x17E; ( n + 4 + n) =0
98
CHAPTER 2. LIMITS AND CONTINUITY
nÏ&#x20AC; n2 (vi) lim sin does not exist because it oscillates: nâ&#x2020;&#x2019;â&#x2C6;&#x17E; 1+ n2 2 if n = 2m nÏ&#x20AC;  0 1 if n = 2m + 1 sin =  2 â&#x2C6;&#x2019;1 if n = 2m + 3
3n 1 = lim =1 n â&#x2C6;&#x2019;n nâ&#x2020;&#x2019;â&#x2C6;&#x17E; 4 + 3 hâ&#x2020;&#x2019;â&#x2C6;&#x17E; 4 · e +1
(v) lim
(vi) lim {cos(nÏ&#x20AC;)} = lim (â&#x2C6;&#x2019;1)n does not exist. nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
Exercises 2.5 Evaluate the following limits: 1. lim
xâ&#x2020;&#x2019;2 x2
3. limâ&#x2C6;&#x2019; xâ&#x2020;&#x2019;1
x â&#x2C6;&#x2019;4
2. lim+ xâ&#x2020;&#x2019;2
x x2 â&#x2C6;&#x2019; 1
x2
x â&#x2C6;&#x2019;4
4. lim tan(x) Ï&#x20AC;â&#x2C6;&#x2019; xâ&#x2020;&#x2019; 2
5. lim sec x Ï&#x20AC;+
6. lim+ cot x
7. limâ&#x2C6;&#x2019; csc x
8. lim
xâ&#x2020;&#x2019;0
xâ&#x2020;&#x2019; 2
3x2 â&#x2C6;&#x2019; 7x + 5 xâ&#x2020;&#x2019;â&#x2C6;&#x17E; 4x2 + 5x â&#x2C6;&#x2019; 7
xâ&#x2020;&#x2019;0
x2 + 4 xâ&#x2020;&#x2019;â&#x2C6;&#x2019;â&#x2C6;&#x17E; 4x3 + 3x â&#x2C6;&#x2019; 5
9. lim
â&#x2C6;&#x2019;x4 + 2x â&#x2C6;&#x2019; 1 xâ&#x2020;&#x2019;â&#x2C6;&#x17E; x2 + 3x + 2
10. lim
1 + (â&#x2C6;&#x2019;1)n xâ&#x2020;&#x2019;â&#x2C6;&#x17E; n3
cos(nÏ&#x20AC;) xâ&#x2020;&#x2019;â&#x2C6;&#x17E; n2
12. lim
sin(n) xâ&#x2020;&#x2019;â&#x2C6;&#x17E; n
14. lim
11. lim
1 â&#x2C6;&#x2019; cos n xâ&#x2020;&#x2019;â&#x2C6;&#x17E; n
13. lim
15. lim
xâ&#x2020;&#x2019;â&#x2C6;&#x17E;
nÏ&#x20AC; 2
cos n
16. lim tan xâ&#x2020;&#x2019;â&#x2C6;&#x17E;
nÏ&#x20AC; n
Chapter 3 Differentiation In Definition 2.2.2, we defined the slope function of a function f at c by f (x) − f (c) x→c x−c f (c + h) − f (c) = lim . h→0 h
slope(f (x), c) = lim
The slope (f (x), c) is called the derivative of f at c and is denoted f 0 (c). Thus, f (c + h) − f (c) f 0 (c) = lim . h→0 h Link to another file.
3.1
The Derivative
Definition 3.1.1 Let f be defined on a closed interval [a, b] and a < x < b. Then the derivative of f at x, denoted f 0 (x), is defined by f 0 (x) = lim
h→0
f (x + h) − f (x) h
whenever the limit exists. When f 0 (x) exists, we say that f is differentiable at x. At the end points a and b, we define one-sided derivatives as follows: (i) f 0 (a+ ) = lim+ x→a
f (x) − f (a) f (a + h) − f (a) = lim+ . h→0 x−a h 99
100
CHAPTER 3. DIFFERENTIATION
We call f 0 (a+) the right-hand derivative of f at a. f (x) − f (b) f (b + h) − f (b) = lim− . x→b h→0 x−b h We call f 0 (b) the left-hand derivative of f at b. (ii) f 0 (b− ) = lim−
Example 3.1.1 In Example 28 of Section 2.2, we proved that if f (x) = sin x, then f 0 (c) = slope (sin x, c) = cos c. Thus, f 0 (x) = cos x if f (x) = sin x.
Example 3.1.2 In Example 29 of Section 2.2, we proved that if f (x) = cos x, then f 0 (c) = − sin c. Thus, f 0 (x) = − sin x if f (x) = cos x.
Example 3.1.3 In Example 30 of Section 2.2, we proved that if f (x) = xn for a natural number n, then f 0 (c) = ncn−1 . Thus f 0 (x) = nxn−1 , when f (x) = xn , for any natural number n. In order to find derivatives of functions obtained from the basic elementary functions using the operations of addition, subtraction, multiplication and division, we state and prove the following theorem.
Theorem 3.1.1 If f is differentiable at c, then f is continuous at c. The converse is false. Proof. Suppose that f is differentiable at c. Then lim
x→c
f (x) − f (c) = f 0 (c) x−c
and f 0 (c) is a real number. So, f (x) − f (c) lim f (x) = lim (x − c) + f (c) x→c x→c x−c f (x) − f (c) = lim · lim(x − c) + f (c) x→0 x→c x−c 0 = f (c) · 0 + f (c) = f (c).
3.1. THE DERIVATIVE
101
Therefore, if f is differentiable at c, then f is continuous at c. To prove that the converse is false we consider the function f (x) = |x|. This function is continuous at x = 0. But |x + h| − |x| 0 f (x) = lim h→0 h (|x + h| − |x|)(|x + h| + |x|) = lim h→0 h(|x + h| + |x|) 2 x + 2xh + h2 − x2 = lim h→0 h(|x + h| + |x|) 2x + h = lim h→0 |x + h| |x| x = |x| 1 for x > 0 = −1 for x < 0 undefined for x = 0. Thus, |x| is continuous at 0 but not differentiable at 0. This completes the proof of Theorem 3.1.1. Theorem 3.1.2 Suppose that functions f and g are defined on some open interval (a, b) and f 0 (x) and g 0 (x) exist at each point x in (a, b). Then (i) (f + g)0 (x) = f 0 (x) + g 0 (x) (ii) (f − g)0 (x) = f 0 (x) − g 0 (x)
(The Sum Rule) (The Difference Rule)
(iii) (kf )0 (x) = kf 0 (x), for each constant k.
(The Multiple Rule)
(iv) (f · g)0 (x) = f 0 (x) · g(x) + f (x) · g 0 (x)
(The Product Rule)
0 g(x)f 0 (x) − f (x)g 0 (x) f (x) = , if g(x) 6= 0. (v) g (g(x))2 Proof.
(The Quotient Rule)
102
CHAPTER 3. DIFFERENTIATION [f (x + h) + g(x + h)] − [f (x) + g(x)] h
Part (i) (f + g)0 (x) = lim
h→0
f (x + h) − f (x) g(x + h) − g(x) + lim h→0 h h
= lim
h→0
= f 0 (x) + g 0 (x).
Part (ii) (f − g)0 (x) = lim
h→0
[f (x + h) − g(x + h)] − [f (x) − g(x)] h
f (x + h) − f (x) g(x + h) − g(x) − lim h→0 h→0 h h = f 0 (x) − g 0 (x). = lim
Part (iii) (kf )0 (x) = lim
h→0
kf (x + h) − kf (x) h
= k · lim
h→0
f (x + h) − f (x) h
= kf 0 (x).
Part (iv) f (x + h)g(x + h) − f (x)g(x) h→0 h 1 = lim [(f (x + h) − f (x))g(x + h) + f (x)(g(x + h) − g(x))] h→0 h f (x + h) − f (x) g(x + h) − g(x) = lim · lim g(x + h) + f (x) lim h→0 h→0 h→0 h h 0 0 = f (x)g(x) + f (x)g (x).
(f · g)0 (x) = lim
3.1. THE DERIVATIVE
103
0 f 1 f (x + h) f (x) Part (v) (x) = lim − h→0 h g g(x + h) g(x) 1 = lim h→0 h
f (x + h) · g(x) − g(x + h)f (x) g(x + h)g(x)
1 = lim (g(x))2 h→0
(g(x + h) − g(x)) (f (x + h) − f (x)) g(x) − f (x) h h
=
1 · [f 0 (x)g(x) − f (x)g 0 (x)] (g(x))2
=
g(x)f 0 (x) − g(x)g 0 (x) , if g(x) 6= 0. (g(x))2
To emphasize the fact that the derivatives are taken with respect to the independent variable x, we use the following notation, as is customary: f 0 (x) =
d (f (x)). dx
Based on Theorem 3.1.2 and the definition of the derivative, we get the following theorem. Theorem 3.1.3 (i)
d(k) = 0, where k is a real constant. dx
(ii)
d (xn ) = nxn−1 , for each real number x and natural number n. dx
(iii)
d (sin x) = cos x, for all real numbers (radian measure) x. dx
(iv)
d (cos x) = − sin x, for all real numbers (radian measure) x. dx
(v)
d π (tan x) = sec2 x, for all real numbers x 6= (2n + 1) , n = integer. dx 2
104
CHAPTER 3. DIFFERENTIATION
d (cot x) = − csc2 x, for all real numbers x 6= nπ, n = integer. dx d π (vii) (sec x) = sec x tan x, for all real numbers x 6= (2n + 1) , n = integer. dx 2 (vi)
(viii)
d (csc x) = − csc x cot x, for all real numbers x 6= nπ, n = integer. dx
Proof. Part(i)
k−k d(k) (k) = lim h→0 dx h = lim
h→0
0 h
= 0. Part (ii) For each natural n, we get (x + h)n − xn d n (x ) = lim (Binomial Expansion) h→0 dx h 1 n(n − 1) n−2 2 n n−1 n n = lim x + nx h + x h + ··· + h − x h→0 h 2! n(n − 1) n−2 n−1 n−1 = lim nx + x h + ··· + h h→0 2! = nxn−1 .
Part (iii) By definition, we get d sin(x + h) − sin x (sin x) = lim h→0 dx h sin x cos h + cos x sin h − sin x = lim h→0 h 1 − cos h sin h − sin x = lim cos x h→0 h h = cos x · 1 − sin x · 0 = cos x
3.1. THE DERIVATIVE since lim
h→0
sin h 1 − cos h = 1, lim = 0. (Why?) h→0 h h
Part (iv) By definition, we get cos(x + h) − cos x d (cos x) = lim h→0 dx h 1 = lim [cos x cos h − sin x sin h − cos x] h→0 h 1 − cos h sin h = lim − sin x · − cos x h→0 h h = − sin x · 1 − cos x · 0 (Why?) = − sin x.
Part (v) Using the quotient rule and parts (iii) and (iv), we get d sin x d (tan x) = dx dx cos x cos x(sin x)0 − sin x(cos x)0 = (cos x)2 cos2 x + sin2 x = cos2 x 1 = (Why?) cos2 x π = sec2 x, x 6= (2n + 1) , n = integer. 2
105
106
CHAPTER 3. DIFFERENTIATION
Part (vi) Using the quotient rule and Parts (iii) and (iv), we get d d cos x (cot x) = dx dx sin x (sin x)(cos x)0 − (cos x)(sin x)0 = (sin x)2 − sin2 x − cos2 x = (Why?) (sin x)2 −1 = (why?) (sin x)2 = − csc2 x, x 6= nπ, n = integer.
Part (vii) Using the quotient rule and Parts (iii) and (iv), we get d 1 d (sec x) = dx dx cos x (cos x) · 0 − 1 · (cos x)0 = (cos x)2 sin x 1 = · (Why?) cos x cos x π = sec x tan x, x 6= (2n + 1) , n = integer. 2
Part (viii) Using the quotient rule and Parts (iii) and (iv), we get d d 1 (csc x) = dx dx sin x sin x · 0 − 1 · (sin x)0 = (sin x)2 1 − cos x = · (Why?) sin x sin x = − csc x cot x, x 6= nπ, n = integer. This concludes the proof of Theorem 3.1.3.
3.1. THE DERIVATIVE
107
Example 3.1.4 Compute the following derivatives: (i)
d (4x3 − 3x2 + 2x + 10) dx
(iii)
d (x sin x + x2 cos x) dx
d (4 sin x − 3 cos x) dx 3 d x +1 (iv) dx x2 + 4 (ii)
Part (i) Using the sum, difference and constant multiple rules, we get d d 3 d d (4x3 − 3x2 + 2x + 10) = 4 (x ) − 3 (x2 ) + 2 +0 dx dx dx dx = 12x2 − 6x + 2.
Part (ii)
d d d (4 sin x − 3 cos x) = 4 (sin x) − 3 (cos x) dx dx dx = 4 cos x − 3(− sin x) = 4 cos x + 3 sin x.
Part (iii) Using the sum and product rules, we get d d d (x sin x + x2 cos x) = (x sin x) + (x2 cos x) (Sum Rule) dx dx dx d d sin x + x (sin x) = dx dx d 2 2 d + (x ) cos x + x (cos x) dx dx = 1 · sin x + x cos x + 2x cos x + x2 (− sin x) = sin x + 3x cos x − x2 sin x.
108
CHAPTER 3. DIFFERENTIATION
Part (iv). Using the sum and quotient rules, we get 3 d d (x2 + 4) dx (x3 + 1) − (x3 + 1) dx (x2 + 4) d x +1 = (Why?) dx x2 + 4 (x2 + 4)2 (x2 + 4)(3x2 ) − (x3 + 1) = x = (Why?) (x2 + 4)2 3x4 + 12x2 − 2x3 − 2x = (Why?) (x2 + 4)2 3x4 − 2x3 + 12x2 − 2x = . (x2 + 4)2 Exercises 3.1 d (x3 ) = 3x2 . dx d 1 −1 2. From the definition, prove that = 2. dx x x 1. From the definition, prove that
Compute the following derivatives: d (x5 − 4x2 + 7x − 2) dx 2x + 1 d 5. dx x2 + 1
3.
d (4 sin x + 2 cos x − 3 tan x) dx 4 d x +2 6. dx 3x + 1 4.
7.
d (3x sin x + 4x2 cos x) dx
8.
9.
d (3 cot x + 5 csc x) dx
10.
d (4 tan x − 3 sec x) dx d (x2 tan x + x cot x) dx
Recall that the equation of the line tangent to the graph of f at (c, f (c)) has slope f 0 (c) and equations. Tangent Line:
y − f (c) = f 0 (c)(x − c)
The normal line has slope −1/f 0 (c), if f 0 (c) 6= 0 and has the equation:
3.1. THE DERIVATIVE Normal Line:
109
y − f (c) =
−1 (x − c). f 0 (c)
In each of the following, find the equation of the tangent line and the equation of the normal line for the graph of f at the given c. 11. f (x) = x3 + 4x − 12, c = 1
12. f (x) = sin x, c = π/6
13. f (x) = cos x, c = π/3
14. f (x) = tan x, c = π/4
15. f (x) = cot x, c = π/4
16. f (x) = sec x, c = π/3
17. f (x) = csc x, c = π/6
18. f (x) = 3 sin x + 4 cos x, c = 0.
Recall that Newton’s Method solves f (x) = 0 for x by using the fixed point iteration algorithm: xn+1 = g(xn ) = xn −
f (xn ) , x0 = given, f 0 (xn )
with the stopping rule, for a given natural number n, |xn+1 − xn | < 10−n . In each of the following, set up Newton’s Iteration and perform 3 calculations for a given x0 . 19. f (x) = 2x − cos x , x0 = 0.5 20. f (x) = x3 + 2x + 1 , x0 = −0.5 21. f (x) = x3 + 3x2 − 1 = 0, x0 = 0.5 22. Suppose that f 0 (c) exists. Compute each of the following limits in terms of f 0 (c) (a) lim
f (x) − f (c) x−c
(b) lim
f (c + h) − f (c) h
(c) lim
f (c − h) − f (c) h
(d) lim
f (c) − f (t) t−c
(e) lim
f (c + h) − f (c − h) 2h
(f) lim
f (c + 2h) − f (c − 2h) h
x→c
h→0
h→0
h→0
t→c
h→0
110
CHAPTER 3. DIFFERENTIATION
23. Suppose that g is differentiable at c and ( f (t) =
g(t)−g(c) t−c 0
g (c)
if t 6= c if t = c.
Show that f is continuous at c. Suppose that a business produces and markets x units of a commercial item. Let C(x) = The total cost of producing x-units. p(x) = The sale price per item when x-units are on the market. R(x) = xp(x) = The revenue for selling x-units. P (x) = R(x) − C(x) = The gross profit for selling x-items. C 0 (x) = The marginal cost. R0 (x) = The marginal revenue. P 0 (x) = The marginal profit. In each of the problems 24–26, use the given functions C(x) and p(x) and compute the revenue, profit, marginal cost, marginal revenue and marginal profit. 24. C(x) = 100x − (0.2)x2 , 0 ≤ x ≤ 5000, p(x) = 10 − x 2 1 25. C(x) = 5000 + , 1 ≤ x ≤ 5000, p(x) = 20 + x x 26. C(x) = 1000 + 4x − 0.1x2 , 1 ≤ x ≤ 2000, p(x) = 10 −
1 x
In exercises 27–60, compute the derivative of the given function. 27. f (x) = 4x3 − 2x2 + 3x − 10
28. f (x) = 2 sin x − 3 cos x + 4
29. f (x) = 3 tan x − 4 sec x
30. f (x) = 2 cot x + 3 csc x
31. f (x) = 2x2 + 4x + 5
32. f (x) = x2/3 − 4x1/3 + 5
33. f (x) = 3x−4/3 + 3x−2/3 + 10
√ 34. f (x) = 2 x + 4
3.2. THE CHAIN RULE
35. f (x) =
2 x2
111
36. f (x) =
4 3 2 − + +1 x3 x2 x
37. f (x) = x4 − 4x2
38. f (x) = (x2 + 2)(x2 + 1)
39. f (x) = (x + 2)(x − 4)
40. f (x) = (x3 + 1)(x3 − 1)
41. y = (x2 + 1) sin x
42. y = x2 cos x
43. y = (x2 + 1)(x10 − 5)
44. y = x2 tan x
45. y = (x1/2 + 4)(x1/3 − 5)
46. y = (2x + sin x)(x2 + 4)
47. y = x5 sin x
48. y = x4 (2 sin x − 3 cos x)
49. y = x2 cot x − 2x + 5
50. y = (x + sin x)(4 + csc x)
51. y = (sec x + tan x)(sin x + cos x)
52. y = x2 (2 cot x − 3 csc x)
53. y =
x2 + 1 x2 + 4
54. y =
1 + sin x 1 + cos x
55. y =
x1/2 + 1 3x3/2 + 2
56. y =
sin x − cos x sin x + cos x
57. y =
t2 + 3t + 2 t3 + 1
58. y =
x 2 ex 1 + ex
59. y =
3 + sin t cos t 4 + sec t tan t
60. y =
t2 sin t 4 + t2
3.2
The Chain Rule
Suppose we have two functions, u and y, related by the equations: u = g(x) and y = f (u).
112
CHAPTER 3. DIFFERENTIATION
Then y = (f ◦ g)(x) = f (g(x)). The chain rule deals with the derivative of the composition and may be stated as the following theorem: Theorem 3.2.1 (The Chain Rule). Suppose that g is defined in an open interval I containing c, and f is defined in an open interval J containing g(c), such that g(x) is in J for all x in I. If g is differentiable at c, and f is differentiable at g(c), then the composition (f ◦ g) is differentiable at c and (f ◦ g)0 (c) = f 0 (g(c)) · g 0 (c). In general, if u = g(x) and y = f (u), then dy du dy = · dx du dx. Proof. Let F be defined on J such that ( F (u) =
f (u)−f (g(c)) u−g(c) 0
f (g(c))
if u 6= g(c) if u = g(c)
since f is differentiable at g(c), f (u) − f (g(c)) u→g(c) u − g(c) 0 = f (g(c)) = F (g(c)).
lim F (u) = lim u→g(c)
Therefore, F is continuous at g(c). By the definition of F , f (u) − f (g(c)) = F (u)(u − g(c)) for all u in J. For each x in I, we let y = g(x) on I. Then (f ◦ g)(x) − (f ◦ g)(c) x→c x−c f (g(x)) − f (g(c)) g(x) − g(c) = lim · x→c g(x) − g(c) x−c g(x) − g(c) = lim F (u) · lim x→c u→g(c) x−c 0 0 = f (g(c)) · g (c).
(f ◦ g)0 (c) = lim
3.2. THE CHAIN RULE
113
It follows that f ◦g is differentiable at c. The general result follows by replacing c by the independent variable x. This completes the proof of Theorem 3.2.1. Example 3.2.1 Let y = u2 + 1 and u = x3 + 4. Then dy du = 2u and = 3x2 . du dx Therefore, dy du dy = · dx du dx = 2u · 3x2 = 6x2 (x3 + 4) . Using the composition notation, we get y = (x3 + 4)2 + 1 = x6 + 8x3 + 17 and dy = 6x5 + 24x2 dx = 6x2 (x3 + 4) . Using (f ◦ g)0 (x) = f 0 (g(x)) · g 0 (x), we see that (f ◦ g)(x) = (x3 + 4)2 + 1 and (f ◦ g)0 (x) = f 0 (g(x)) · g 0 (x) = 2(x3 + 4)1 · (3x2 ) = 6x2 (x3 + 4) .
114
CHAPTER 3. DIFFERENTIATION
Example 3.2.2 Suppose that y = sin(x2 + 3). We let u = x2 + 3, and y = sin u. Then dy dy du = · dx du dx = (cos u)(2x) = (cos(x2 + 3)) · (2x).
Example 3.2.3 Suppose that y = w2 , w = sin u + 3, and u = (4x + 1). Then dy dw du dy = · · dx dw du dx = (2w) · (cos u) · 4 = 8w cos u = 8[sin(4x + 1) + 3] · cos(4x + 1) · 4 = 8(sin(4x + 1) + 3) · cos(4x + 1). If we express y in terms of x explicitly, then we get y = (sin(4x + 1) + 3)2 and dy = 2(sin(4x + 1) + 3)1 · ((cos(4x + 1)) · 4 + 0) dx = 8(sin(4x + 1) + 3) cos(4x + 1).
Example 3.2.4 Suppose that y = (cos(3x + 1))5 . Then dy = 5(cos(3x + 1))4 · (− sin(3x + 1)) · 3 dx = −15(cos(3x + 1))4 sin(3x + 1).
3.2. THE CHAIN RULE
115
Example 3.2.5 Suppose that y = tan3 (2x2 + 1). Then dy = 3(tan2 (2x2 + 1)) · (sec2 (2x2 + 1)) · 4x dx = 12x · tan2 (2x2 + 1) · sec2 (2x2 + 1).
x+1 Example 3.2.6 Suppose that y = cot . Then x2 + 1 2 dy x+1 (x + 1) · 1 − (x + 1)2x 2 = − csc dx x2 + 1 (x2 + 1) · 2x x2 + 2x − 1 x+1 2 = csc . (x2 + 1)2 x2 + 1
3 x2 + 1 Example 3.2.7 Suppose that y = sec . x4 + 2 Since the function y has a composition of several functions, let us define some intermediate functions. Let
x2 + 1 y = sec w, w = u , and u = 4 . x +2 3
Then dy dy dw du = · · dx dw du dx (x4 + 2) · 2x − (x2 + 1) · 4x3 = [sec(w) tan(w)] · [3u ] · (x4 + 2)2 4x − 4x3 − 2x5 = 3u2 (sec w tan w) · (x4 + 2)2 2 2 2 3 2 3 x +1 x +1 x +1 4x − 4x3 − 2x5 =3 sec tan · . x4 + 2 x4 + 2 x4 + 2 (x4 + 2)5 2
116
CHAPTER 3. DIFFERENTIATION
Example 3.2.8 Suppose that y = csc(2x + 5)4 . Then dy = [− csc(2x + 5)4 cot(2x + 5)4 ] · 4(2x + 5)3 · 2 dx = −8(2x + 5)3 csc(2x + 5)4 cot(2x + 5)4 .
Exercises 3.2 Evaluate 1. y = (2x − 5)10
dy for each of the following: dx 2 3 x +2 2. y = x5 + 4
3. y = sin(3x + 5)
4. y = cos(x3 + 1)
5. y = tan5 (3x + 1)
6. y = sec2 (x2 + 1)
7. y = cot4 (2x − 4)
8. y = csc3 (3x2 + 2)
9. y =
3x + 1 x2 + 2
5
10. y =
x2 + 1 x3 + 2
4
11. y = sin(w), w = u3 , u = (2x − 1) 12. y = cos(w), w = u2 + 1, u = (3x + 5) 1 13. y = tan(w), w = v , v = u + 1, u = x 2
3
14. y = sec w, w = v 3 , v = 2u2 − 1, u =
x2
x +1
15. y = csc w, w = 3v + 2, v = (u + 1)3 , u = (x2 + 3)2 In exercises 16–30, compute the derivative of the given function. 3 3 x +1 16. y = 17. y = (x2 − 1)10 x2 + 4
3.2. THE CHAIN RULE
117
18. y = (x2 + x + 2)100
19. y = (2 sin t − 3 cos t)3
20. y = (x2/3 + x4/3 )2
21. y = (x1/2 + 1)50
22. y = sin(3x + 2)
23. y = cos(3x2 + 1)
24. y = sin(2x) cos(3x)
25. y = sec 2x + tan 3x
26. y = sec 2x tan 3x
27. y = (x2 + 1)2 sin 2x
28. y = x sin(1/x2 )
29. y = sin2 (3x) + sec2 (5x)
30. y = cot(x2 ) + csc(3x) In exercises 31–60, assume that (a)
d (ex ) = ex dx
(b)
d (e−x ) = −e−x dx
(d)
d (bx ) = bx ln b dx
(e)
d 1 (logb x) = for b > 0 and b 6= 1. dx x ln b
(c)
d 1 (ln x) = dx x
Compute the derivative of the given function. 31. y = sinh x
32. y = cosh x
33. y = tanh x
34. y = coth x
35. y = sech x
36. y = csch x
37. y = ln(1 + x)
38. y = ln(1 − x)
1 39. y = ln 2
1−x 1+x
41. y = ln x + 43. y = esin 3x
√
x2 − 1
40. y = ln x + 42. y = xe−x
√
2
44. y = e2x sin 4x
x2 + 1
118
CHAPTER 3. DIFFERENTIATION
2
46. y = xeâ&#x2C6;&#x2019;x + 4eâ&#x2C6;&#x2019;x
2
2
48. y = 10(x
45. y = ex (2 sin 3x â&#x2C6;&#x2019; 4 cos 5x) 47. y = 4x
2 +4)
49. y = 10sin 2x
50. y = 3cos 3x
51. y = log10 (x2 + 10)
52. y = log3 (x2 sin x + x)
53. y = ln(sin(e2x ))
54. y = ln(1 + eâ&#x2C6;&#x2019;x )
55. y = ln(cos x + 2)
56. y = ln(ln(x2 + 4))
4 3 x +3 57. y = ln x2 + 10
58. y = (1 + sin2 x)3/2
59. y = ln(sec 2x + tan 2x)
60. y = ln(csc 3x â&#x2C6;&#x2019; cot 3x)
3.3
Differentiation of Inverse Functions
One of the applications of the chain rule is to compute the derivatives of inverse functions. We state the exact result as the following theorem: Theorem 3.3.1 Suppose that a function f has an inverse, f â&#x2C6;&#x2019;1 , on an open interval I. If u = f â&#x2C6;&#x2019;1 (x), then (i)
du = dx
1 dx du
(ii) (f â&#x2C6;&#x2019;1 )0 (x) =
1 f 0 (f â&#x2C6;&#x2019;1 (x))
=
1 f 0 (u)
Proof. By comparison, x = f (f â&#x2C6;&#x2019;1 (x)) = x. Hence, by the chain rule 1=
dx = f 0 (f â&#x2C6;&#x2019;1 (x)) · (f â&#x2C6;&#x2019;1 )0 (x) dx
3.3. DIFFERENTIATION OF INVERSE FUNCTIONS and (f −1 )0 (x) =
1 f 0 (f −1 (x))
119
.
In the u = f −1 (x) notation, we have du = dx
1 dx du
.
Remark 11 In Examples 76–81, we assume that the inverse trigonometric functions are differentiable. π π Example 3.3.1 Let u = arcsin x, −1 ≤ x ≤ 1, and − ≤ u ≤ . Then 2 2 x = sin u and by the chain rule, we get 1=
dx d(sin u) du = · dx du dx du = cos u · dx 1 du = . dx cos u
Therefore, d 1 π π (arcsin x) = , − <u< , dx cos u 2 2 1 =p 1 − sin2 u 1 , −1 < x < 1. =√ 1 − x2
(Why?) (Why?)
Thus, d 1 (arcsin x) = √ , −1 < x < 1. dx 1 − x2 We note that x = ±1 are excluded.
120
CHAPTER 3. DIFFERENTIATION
Example 3.3.2 Let u = arccos x, −1 ≤ x ≤ 1, and 0 ≤ u ≤ π. Then x = cos u and 1=
dx du = − sin u dx dx du 1 =− , 0<u<π dx sin u 1 , 0<u<π = −√ 1 − cos2 u 1 = −√ , −1 < x < 1. 1 − x2
(Why?) (Why?)
We note again that x = ±1 are excluded. Thus, −1 d (arccos x) = √ , −1 < x < 1. dx 1 − x2 Example 3.3.3 Let u = arctan x, −∞ < x < ∞, and −
π π < u < . Then, 2 2
π π <u< 2 2 du π π = (sec2 u), , − <u< dx 2 2 1 = sec2 u 1 π π = , − <u< 2 1 + tan u 2 2 1 = , −∞ < x < ∞ 1 + x2
x = tan u, − 1=
dx dx du dx
Therefore, d 1 (arctan x) = , −∞ < x < ∞. dx 1 + x2
3.3. DIFFERENTIATION OF INVERSE FUNCTIONS Example h π 3.3.4 π Let i u = arcsec x, x ∈ (−∞, −1] ∪ [1, ∞) and u ∈ 0, ∪ , π . Then, 2 2 x = sec u h π π i dx du 1= = sec u tan u · , u ∈ 0, ∪ ,π dx dx 2 2 π π du 1 = , u ∈ 0, ∪ ,π dx sec u tan u 2 2 1 √ (Why the absolute value?) = | sec u| sec2 u − 1 1 = √ , x ∈ (−∞, −1) ∪ (1, ∞). |x| x2 − 1 Thus, d 1 , x ∈ (−∞, −1) ∪ (1, ∞). (arcsec x) = √ dx |x| x2 − 1 Example u = arccsc x, x ∈ (−∞, −1] ∪ [1, ∞), and h π 3.3.5 Let πi u ∈ − , 0 ∪ 0, . Then, 2 2 h π πi x = csc u , u ∈ − , 0 ∪ 0, 2 2 h π πi du dx 1= = − csc u cot u · , u ∈ − , 0 ∪ 0, dx dx 2 2 −1 −π π du = , u∈ , 0 ∪ 0, , (Why?) dx csc u cot u 2 2 1 √ = (Why?) | csc u| csc2 u − 1 1 = √ , x ∈ (−∞, −1) ∪ (1, ∞). |x| x2 − 1 Note that x = ±1 are excluded. Thus, d −1 , x ∈ (−∞, 1] ∪ (1, ∞). (arccsc x) = √ dx x x2 − 1
121
122
CHAPTER 3. DIFFERENTIATION
Example π i 3.3.6 h π Let u = arccot x, x ∈ (−∞, 0] ∪ [0, ∞) and u ∈ 0, ∪ , π . Then 2 2 π i hπ x = cot u, u ∈ 0, ∪ ,π 2 2 and 1= du = dx = =
π i hπ dx du 2 = − csc (u) · , u ∈ 0, ∪ ,π dx dx 2 2 π i hπ −1 , u ∈ 0, ∪ ,π csc2 u 2 2 π i hπ −1 , u ∈ 0, ∪ ,π 1 + cot2 u 2 2 −1 , x ∈ (−∞, 0] ∪ [0, ∞). 1 + x2
Therefore, −1 d (arccotx) = , dx 1 + x2
x ∈ (−∞, 0] ∪ [0, ∞).
The results of these examples are summarized in the following theorem: Theorem 3.3.2 (The Inverse Trigonometric Functions) The following differentiation formulas are valid for the inverse trigonometric functions: (i)
d 1 , −1 < x < 1. (arcsin x) = √ dx 1 − x2
(ii)
−1 d (arccos x) = √ , −1 < x < 1. dx 1 − x2
(iii)
1 d (arctan x) = , −∞ < x < ∞. dx 1 + x2
(iv)
d −1 (arccot x) = , −∞ < x < ∞. dx 1 + x2
(v)
d 1 , −∞ < x < −1 or 1 < x < ∞. (arcsec x) = √ dx |x| x2 − 1
3.3. DIFFERENTIATION OF INVERSE FUNCTIONS (vi)
123
d −1 , −∞ < x < −1 or 1 < x < ∞. (arccsc x) = √ dx |x| x2 − 1
Proof. Proof of Theorem 3.3.2 is outlined in Examples 76–80. Theorem 3.3.3 (Logarithmic and Exponential Functions) (i)
d 1 (ln x) = for all x > 0. dx x
(ii)
d (ex ) = ex for all real x. dx
(iii)
d 1 (logb x) = for all x > 0 and b 6= 1. dx x ln b
d (bx ) = bx (ln b) for all real x, b > 0 and b 6= 1. dx u0 (x) d v(x) v(x) 0 (v) (u(x) = (u(x)) v (x) ln(u(x)) + v(x) . dx u(x)
(iv)
Proof. Proof of Theorem 3.3.3 is outlined in the proofs of Theorems 5.5.1– 5.5.5. We illustrate the proofs of parts (iii), (iv) and (v) here. Part (iii) By definition for all x > 0, b > 0 and b 6= 1, logb x =
ln x . ln b
Then, d 1 d (logb x) = ln x dx dx ln b 1 1 = · ln b x 1 = . x ln b Part (iv) By definition, for real x, b > 0 and b 6= 1, bx = ex ln b .
124
CHAPTER 3. DIFFERENTIATION
Therefore, d d (bx ) = (ex ln b ) dx dx d = ex ln b , (x ln b) dx = bx ln b.
(by the chain rule) (Why?)
Part (v) d v(x) ln(u(x)) d (u(x))v(x) = e dx dx
u0 (x) =e v (x) ln(u(x)) + v(x) u(x) 0 u (x) v(x) 0 = (u(x)) v (x) ln u(x) + v(x) u(x) v(x) ln(u(x))
0
Example 3.3.7 Let y = log10 (x2 + 1). Then d d ln(x2 + 1) 2 (log10 (x + 1)) = dx dx ln 10 1 1 = · 2x ln 10 x2 + 1 2x = 2 . (x + 1) ln 10
Example 3.3.8 Let y = ex
2 +1
(by the chain rule)
. Then, by the chain rule, we get
dy 2 = ex +1 · 2x dx 2 = 2xex +1 .
3.3. DIFFERENTIATION OF INVERSE FUNCTIONS
125
3
Example 3.3.9 Let y = 10(x +2x+1) . By definition and the chain rule, we get dy 3 = 10(x +2x+1) · (ln 10) · (3x2 + 2). dx
Example 3.3.10 dx 2 2x 2 sin x 2 sin x (x + 1) = (x + 1) cos x ln(x + 1) + sin x · 2 dx x +1 h i d d 2x 2 sin x sin x ln(x2 +1) sin x ln(x2 +1) 2 (x + 1) = e =3 · cos x ln(x + 1) + sin x · 2 dx dx x +1 2x sin x = (x2 + 1)sin x cos x ln(x2 + 1) + 2 . x +1
Theorem 3.3.4 (Differentiation of Hyperbolic Functions) (i) (iii) (v)
d (sinh x) = cosh x dx d (tanh x) = sech2 x dx d (sech x) = â&#x2C6;&#x2019;sech x tanh x dx
(ii)
d (cosh x) = sinh x dx
(iv)
d (cothx) = â&#x2C6;&#x2019;csch2 x dx
(vi)
d (csch x) = â&#x2C6;&#x2019;csch x coth x. dx
Proof. Part (i) d d 1 x â&#x2C6;&#x2019;x (sinh x) = (e â&#x2C6;&#x2019; e ) dx dx 2 1 = (ex â&#x2C6;&#x2019; eâ&#x2C6;&#x2019;x (â&#x2C6;&#x2019;1)) (by the chain rule) 2 1 = (ex + eâ&#x2C6;&#x2019;x ) 2 = cosh x.
126
CHAPTER 3. DIFFERENTIATION
Part (ii)
d d 1 x −x (cosh x) = (e + e ) dx dx 2 1 = (ex + e−x (−1)) (by the chain rule) 2 1 = (ex − e−x ) 2 = sinh x.
Part (iii) x d e − e−x d (tanh x) = dx dx ex + e−x (ex + e−x )(ex + e−x ) − (ex − e−x )(ex − e−x ) = (ex + e−x )2 4 = x (e + e−x )2 2 2 = ex + e−x = sech2 x.
Part (iv)
d 2 d (sech x) = dx dx ex + e−x (ex + e−x ) · 0 − 2(ex − e−x ) = (ex + e−x )2 2 ex − e−x · =− x e + e−x ex + e−x = −sech x tanh x.
3.3. DIFFERENTIATION OF INVERSE FUNCTIONS
127
Part (v) x d d e + e−x (coth x) = , x 6= 0 dx dx ex − e−x (ex − e−x )(ex − e−x ) − (ex + e−x )(ex + e−x ) = (ex − e−x )2 −4 = x , x 6= 0 (e − e−x )2 2 2 =− x , x 6= 0 e − e−x = −csch2 x , x 6= 0. Part (vi) d 2 d (csch x) = , x 6= 0 dx dx ex − e−x (ex − e−x ) · 0 − 2(ex + e−x ) , x 6= 0 = (ex − e−x )2 2 ex + e−x =− x · , x 6= 0 e − e−x ex − e−x = −csch x coth x, x 6= 0.
Theorem 3.3.5 (Inverse Hyperbolic Functions) (i)
d 1 (arcsinh x) = √ dx 1 + x2
(ii)
d 1 , (arccosh x) = √ dx x2 − 1
(iii)
d 1 (arctanh x) = , dx 1 − x2
Proof.
x>1
|x| < 1
x 6= 0
128
CHAPTER 3. DIFFERENTIATION
Part (i) √ d d (arcsinh x) = ln(x + 1 + x2 ) dx dx 1 x √ = · 1+ √ x + 1 + x2 1 + x2 √ 1 1 + x2 + x √ = · √ x + 1 + x2 1 + x2 1 =√ . 1 + x2
(by chain rule)
Part (ii) √ d d (arccosh x) = ln(x + x2 − 1) , x ≥ 1 dx dx 1 x √ = · 1+ √ , x>0 x + x2 − 1 x2 − 1 √ 1 x2 − 1 + x √ · √ ,x > 0 = x + x2 − 1 x2 − 1 1 , x > 0. =√ 2 x −1 Part (iii) d d 1 1+x (arctanh x) = ln , |x| < 1 dx dx 2 1−x d 1 = ln(1 + x) − ln(1 − x) , dx 2 1 1 −1 − , |x| < 1 = 2 1+x 1−x 1 1 1 + , |x| < 1 = 2 1+x 1−x 1 1−x+1+x = , |x| < 1 2 1 − x2 1 , |x| < 1. = 1 − x2
|x| < 1
3.3. DIFFERENTIATION OF INVERSE FUNCTIONS Exercises 3.3 Compute
129
dy for each of the following: dx
2
1−x 1+x
, −1 < x < 1
1. y = ln(x + 1)
2. y = ln
3. y = log2 (x)
4. y = log5 (x3 + 1)
5. y = log10 (3x + 1)
6. y = log10 (x2 + 4)
7. y = 2e−x
8. y = ex
9. y =
1 x2 2 (e − e−x ) 2 2
11. y =
10. y =
2
1 x2 2 (e + e−x ) 2
2
ex − e−x ex2 + e−x2
12. y =
e
x2
2 + e−x2
2 e − e−x3 x 15. y = arcsin 2 x 17. y = arctan 5 x 19. y = arcsec 2
2 e + e−x4 x 16. y = arccos 3 x 18. y = arccot 7 x 20. y = arccsc 3
21. y = 3 sinh(2x) + 4 cosh 3x
22. y = ex (3 sin 2x + 4 cos 2x)
23. y = e−x (4 sin 3x − 3 cos 3x)
24. y = 4 sinh 2x + 3 cosh 2x
25. y = 3 tanh(2x) − 7 coth (2x)
26. y = 3 sech (5x) + 4 csch (3x)
13. y =
x3
27. y = 10x 29. y = 5(x
2
4 +x2 )
14. y =
x4
28. y = 2(x
3 +1)
30. y = 3sin x
130
CHAPTER 3. DIFFERENTIATION
31. y = 4cos(x
2)
32. y = 10tan(x
33. y = 2cot x 35. y = 4csc(x
3)
34. y = 10sec(2x) 2)
36. y = e−x (2 sin(x2 ) + 3 cos(x3 ))
37. y = arcsinh 39. y = arctan
x
38. y = arccosh
2 x
x
40. y = x arcsinh
4
3 x 3
In exercises 41–50, use the following procedure to compute the derivative of the given functions: d g(x) ln(f (x)) d [(f (x)g(x) ] = [e ] dx dx f 0 (x) g(x) ln(f (x)) 0 =e · g (x) ln(f (x)) + g(x) f (x)
g(x)
= (f (x))
f 0 (x) 0 · g (x) ln(f (x)) + g(x) . f (x)
41. y = (x2 + 4)3x
42. y = (2 + sin x)cos x
43. y = (3 + cos x)sin 2x
44. y = (x2 + 4)x
45. y = (1 + x)1/x
46. y = (1 + x2 )cos 3x
47. y = (2 sin x + 3 cos x)x 49. y = (1 + sinh x)cosh x
3.4
3
2 +1
48. y = (1 + ln x)1/x
2
50. y = (sinh2 x + cosh2 x)x
2 +3
Implicit Differentiation
So far we have dealt with explicit functions such as x2 , sin x, cos x, ln x, ex , sinh x and cosh x etc. In applications, two variables can be related by an equation such as
3.4. IMPLICIT DIFFERENTIATION (i) x2 + y 2 = 16
(ii) x3 + y 3 = 4xy
131 (iii) x sin y + cos 3y = sin 2y.
In such cases, it is not always practical or desirable to solve for one variable explicitly in terms of the other to compute derivatives. Instead, we may implicitly assume that y is some function of x and differentiate each term of the equation with respect to x. Then we solve for y 0 , noting any conditions under which the derivative may or may not exist. This process is called implicit differentiation. We illustrate it by examples. dy if x2 + y 2 = 16. dx Assuming that y is to be considered as a function of x, we differentiate each term of the equation with respect to x. Example 3.4.1 Find
graph
d d d (x2 ) + (y 2 ) = (16) dx dx dx dy 2x + 2y =0 (Why?) dx dy 2y = −2x dx dy x = − , provided y 6= 0. dx y We observe that there are two points, namely (4, 0) and (−4, 0) that satisfy the equation. At each of these points, the tangent line is vertical and hence, has no slope. If we solve for y in terms of x, we get two solutions, each representing a function of x: y = (16 − x2 )1/2
or y = −(16 − x2 )1/2 .
132
CHAPTER 3. DIFFERENTIATION
On differentiating each function with respect to x, we get, respectively, dy 1 dy 1 = (16 − x2 )−1/2 (−2x) ; or = − (16 − x2 )−1/2 (−2x) dx 2 dx 2 dy x x =− ; or dx (16 − x2 )1/2 −(16 − x2 )1/2 x dy x dy = − , y 6= 0; or = − , y 6= 0. dx y dx y
In each case, the final form is the same as obtained by implicit differentiation.
dy for the equation x3 + y 3 = 4xy. dx As in Example 2.4.1, we differentiate each term with respect to x, assuming that y is a function of x. Example 3.4.2 Compute
d d dy 3 (x ) + (y 3 ) = (4xy) dx dx dx dx dy dy 2 2 3x + 3y =4 y+x dx dx dx dy dy (3y 2 ) − 4x = 4y − 3x2 dx dx dy (3y 2 − 4x) = 4y − 3x2 dx dy 4y − 3x2 = 2 , if 3y 2 − 4x 6= 0. dx 3y − 4x
(Why?) (Why?) (Why?) (Why?)
This differentiation formula is valid for all points (x, y) on the given curve, where 3y 2 − 4x 6= 0.
dy for the equation x sin y + cos 3y = sin 2y. In Example 3.4.3 Compute dx this example, it certainly is not desirable to solve for y explicitly in terms of
3.4. IMPLICIT DIFFERENTIATION
133
x. We consider y to be a function of x, differentiate each term of the equation with respect to x and then algebraically solve for y in terms of x and y. d d d (x sin y) + (cos 3y) = (sin 2y) dx dx dx dx d dy dy (sin y) + x (sin y) + (−3 sin 3y) = (cos 2y) 2 dx dx dx dx dy dy dy sin y + x(cos y) − 3 sin(3y) = (2 cos 2y) . dx dx dx dy Upon collecting all terms containing on the left-side, we get dx dy [x cos y − 3 sin 3y − 2 cos 2y] = − sin y dx sin y dy =− dx x cos y − 3 sin 3y − 2 cos 2y whenever x cos y − 3 sin 3y − 2 cos 2y 6= 0. (x − 2)2 (y − 3)2 dy for + = 1. Example 3.4.4 Find dx 9 16 On differentiating each term with respect to x, we get
graph
d dx
(x − 2)2 d (y − 3)2 d + = (1) 9 dx 16 dx 2 2 dy (x − 2) + (y − 3) =0 9 16 dx dy 2(x − 2)/9 =− , if y 6= 3 dx 2(y − 3)/16 16(x − 2) =− , if y = 3. 9(y − 3)
134
CHAPTER 3. DIFFERENTIATION
The tangent lines are vertical at (−1, 3) and (5, 3). The graph of this equation is an ellipse.
Example 3.4.5 Find
dy for the astroid x2/3 + y 2/3 = 16. dx
graph
d d (x2/3 ) + (y 2/3 ) = 0 dx dx 2 −1/3 2 −1/3 dy x + y = 0, if x 6= 0 and y 6= 0 3 3 dx 1/3 y −1/3 x dy = − −1/3 = − , if x 6= 0 and y 6= 0. dx x y
Example 3.4.6 Find 4(x2 − y 2 ).
graph
dy for the lemniscate with equation (x2 + y 2 )2 = dx
3.4. IMPLICIT DIFFERENTIATION
135
d d ((x2 + y 2 )2 ) = 4 (x2 − y 2 ) dx dx dy dy 2 2 2(x + y ) 2x + 2y = 4 2x − 2y dx dx dy [4y(x2 + y 2 ) + 8y] = 8x − 4x(x2 + y 2 ) (Why?) dx dy 8x − 4x(x2 + y 2 ) = , if 4y(x2 + y 2 ) + 8y 6= 0, y 6= 0. 2 2 dx 4y(x + y ) + 8y
Example 3.4.7 Find the equations of the tangent and normal lines at (x0 , y0 ) to the graph of an ellipse of the form (x − k)2 (y − k)2 + = 1. a2 b2 First, we find
dy by implicit differentiation as follows: dx (x − h)2 (y − k)2 d d d (1) + = dx a2 dx b2 dx 2 2 dy (x − h) + (y − k) =0 a2 b2 dx dy 2 b2 = − 2 (x − h) · , if y 6= k dx a 2(y − k) −b2 x − h , y 6= k. = 2 a y−k
It is clear that at (a + h, k) and (−a + h, k), the tangent lines are vertical and have the equations x=a+h
and
x = −a + h.
Let (x0 , y0 ) be a point on the ellipse such that y0 6= k. Then the equation of the line tangent to the ellipse at (x0 , y0 ) is −b2 x0 − h (x − x0 ). y − y0 = 2 a y0 − k
136
CHAPTER 3. DIFFERENTIATION
We may express this in the form (y − y0 )(y0 − k) (x − x0 )(x0 − h) + = 0. b2 a2 By rearranging some terms, we can simplify the equation in the following traditional form: (x − h) + (h − x0 ) (y − k) + (k − y0 ) · (y0 − k) + (x0 − h) = 0 2 b a2 (y − k)(y0 − k) (x − h)(x0 − h) (x0 − h)2 (y0 − k)2 + = + = 1. b2 a2 a2 b2 (y − k)(y0 − k) (x − h)(x0 − h) + =1 . b2 a2
Exercises 3.4 In each of the following, find
dy by implicit differentiation. dx
1. y 2 + 3xy + 2x2 = 16
2. x3/4 + y 3/4 = 103/4
3. x5 + 4x3 y 2 + 3y 4 = 8
4. sin(x − y) = x2 y cos x
5.
x2 y 2 − =1 4 9
6.
x2 y 2 + =1 16 9
Find the equation of the line tangent to the graph of the given equation at the given point. √ ! 2 2 x y 2 5 7. + = 1 at 2, 9 4 3 x2 y 2 − = 1 at 8. 9 4 2 2
2
3 √ 5, 1 2 2
9. x y = (y + 1) (9 − y ) at 10. y 2 = x3 (4 − x) at (2, 4)
3 √ 5, 2 2
3.5. HIGHER ORDER DERIVATIVES
137
Two curves are said to be orthogonal at each point (x0 , y0 ) of their intersection if their tangent lines are perpendicular. Show that the following families of curves are orthogonal. 11. x2 + y 2 = r2 , y + mx = 0 12. (x − h)2 + y 2 = h2 , x2 + (y − k)2 = k 2 Compute y 0 and y 00 in exercises 13–20. 13. 4x2 + 9y 2 = 36
14. 4x2 − 9y 2 = 36
15. x2/3 + y 2/3 = 16
16. x3 + y 3 = a3
17. x2 + 4xy + y 2 = 6
18. sin(xy) = x2 + y 2
19. x4 + 2x2 y 2 + 4y 4 = 26
20. (x2 + y 2 )2 = x2 − y 2
3.5
Higher Order Derivatives
If the vertical height y of an object is a function f of time t, then y 0 (t) is called its velocity, denoted v(t). The derivative v 0 (t) is called the acceleration of the object and is denoted a(t). That is, y(t) = f (t), y 0 (t) = v(t), v 0 (t) = a(t). We say that a(t) is the second derivative of y, with respect to t, and write y 00 (t) = a(t) or
d2 y = a(t). dt2
Derivatives of order two or more are called higher derivatives and are represented by the following notation: y 0 (x) =
dy d2 y d3 y dn y , y 00 (x) = 2 , y 000 (x) = 3 , . . . , y (n) (x) = n . dx dx dx dx
The definition is given as follows by induction: n−1 d2 f d df dn f d d f = and = , n = 2, 3, 4, · · · . 2 n dx dx dx dx dx dxn−1
138
CHAPTER 3. DIFFERENTIATION
A convenient notation is
dn f dxn which is read as “the nth derivative of f with respect to x.” f (n) (x) =
Example 3.5.1 Compute the second derivative y 00 for each of the following functions: (i) y = sin(3x)
(ii) y = cos(4x2 )
(iii) y = tan(3x)
(iv) y = cot(5x)
(v) y = sec(2x)
(vi) y = csc(x2 )
Part (i) y 0 = 3 cos(3x), y 00 = −9 sin(3x) Part (ii) y 0 = −8x sin(4x2 ), y 00 = −8[sin(4x2 ) + x · (8x) · cos(4x2 )] Part(iii) y 0 = 3 sec2 (3x), y 00 = 3[2 sec(3x) · sec(3x) tan(3x) · 3] y 00 = 18 sec2 (3x) tan(3x)
Part(iv) y 0 = −5 csc2 (5x), y 00 = −10 csc(5x)[(− csc 5x cot 5x) · 5] y 00 = 50 csc2 (5x) cot(5x)
Part(v) y 0 = 2 sec(2x) tan(2x) y 00 = 2[(2 sec(2x) tan(2x)) · tan(2x) + sec(2x) · (2 sec2 (2x))] y 00 = 4 sec(2x) tan2 (2x) + 4 sec3 (2x)
Part(vi) y 0 = −2x csc(x2 ) cot(x2 ) y 00 = −2[1 · csc(x2 ) cot(x2 ) + x(−2x csc(x2 ) cot(x2 )) · cot(x2 )
3.5. HIGHER ORDER DERIVATIVES
139
+ x csc(x2 ) · (−2x csc2 (x2 ))] = −2 csc(x2 ) cot(x2 ) + 4x2 csc(x2 ) cot2 (x2 ) + 4x2 csc3 (x2 )
Example 3.5.2 Compute the second order derivative of each of the following functions: (i) y = sinh(3x)
(ii) y = cosh(x2 )
(iii) y = tanh(2x)
(iv) y = coth(4x)
(v) y = sech(5x)
(vi) y = csch(10x)
Part (i) y 0 = 3 cosh(3x), y 00 = 9 sinh(3x) Part (ii) y 0 = 2x sinh(x2 ), y 00 = 2 sinh(x2 ) + 2x(2x cosh x2 ) or y 00 = 2 sinh(x2 ) + 4x2 cosh(x2 ) Part (iii) y 0 = 2 sech2 (2x), y 00 = 2 · (2 sech(2x) · (−sech(2x) tanh(2x) · 2)), y 00 = −8 sech2 (2x) tanh(2x) Part (iv) y 0 = −4 csch2 (4x), y 00 = −4(2(csch(4x)) · (−csch(4x) coth(4x) · 4)) y 00 = 32 csch2 (4x) coth(4x) Part (v) y 0 = −5 sech (5x) tanh(5x) y 0 = −5[−5 sech(5x) tanh(5x) · tanh(5x) + sech(5x) · sech2 (5x) · 5] y 0 = 25 sech(5x) tanh2 (5x) − 25 sech3 (5x). Part (vi) y 0 = −10 csch(10x) coth(10x) y 00 = −10[−10 csch(10x) coth(10x) · coth(10x)
140
CHAPTER 3. DIFFERENTIATION
+ csch(10x)(−10 csch2 (10x))] y 00 = 100 csch(10x) coth2 (10x) + 100 csch3 (10x)
Example 3.5.3 Compute the second order derivatives for the following functions: (i) y = ln(x2 ) (iv) y = 10x
(ii) y = ex
2
Part (i) y 0 =
2
(iii) log10 (x2 + 1)
(v) y = arcsin x
(vi) y = arctan x
2 2x = = 2x−1 x2 x
y 00 = −2x−2 =
−2 . x2
2
2
2
2
Part (ii) y 0 = 2xex , y 00 = 2ex + 4x2 ex = (2 + 4x2 )ex . 1 2x 2 Part (iii) y = · 2 , y 00 = ln 10 x + 1 ln 10 0
(x2 + 1) · 1 − x · 2x , (x2 + 1)2
1 − x2 2 · y = ln 10 (x2 + 1)2 00
2
Part (iv) y 0 = 10x · (ln 10) · 2x 2
2
y 00 = 2 ln 10[10x + x · 10x ln 10 · 2x] 2
y 00 = 10x [2 ln 10 + (2 ln 10)2 x2 ] 1 Part (v) y 0 = √ = (1 − x2 )−1/2 2 1−x
3.5. HIGHER ORDER DERIVATIVES y 00 =
−1 (1 − x2 )−3/2 (−2x) 2
y 00 =
x . (1 − x2 )3/2
Part (vi) y 0 =
141
1 = (1 + x2 )−1 2 1+x
y 00 = −1(1 + x2 )−2 · 2x =
−2x (1 + x2 )2
Example 3.5.4 Compute the second derivatives of the following functions:
(i) y = arcsinh x
(ii) y = arccosh x
(iii) y = arctanh x
From Section 1.4, we recall that √ arcsinh x = ln(x + 1 + x2 ) √ arccosh x = ln(x + x2 − 1) , x ≥ 1 1 1+x 1 arctanh x = ln = [ln(1 + x) − ln(1 − x)], |x| < 1. 2 1−x 2 Then Part (i) 1 y0 = √ 1 + x2 d2 d (arcsinh x) = (1 + x2 )−1/2 2 dx dx −1 = (2x)(1 + x2 )−3/2 2 x . =− (1 + x2 )3/2
142
CHAPTER 3. DIFFERENTIATION
Part (ii) 1 y0 = √ , x>1 2 x −1 d2 d (arccosh x) = (x2 − 1)−1/2 2 dx dx −1 = (2x)(x2 − 1)−3/2 2 x =− 2 , x>1 (x − 1)3/2 Part (iii) 1 , |x| < 1. 1 − x2 d d2 (arctanh x) = (1 − x2 )−1 dx dx = (−1)(1 − x2 )−2 (−2x) x = , |x| < 1. (1 − x2 )2 y0 =
Example 3.5.5 Find y 00 for the equation x2 + y 2 = 4. First, we find y 0 by implicit differentiation. x 2x + 2yy 0 = 0 → y 0 , . y Now, we differentiate again with respect to x. y · 1 − xy 0 y = y2 y − x(−x/y) =− y2 2 y + x2 =− y3 4 =− 3 y 00
(replace y 0 by −x/y) (Why?) (since x2 + y 2 = 4)
3.5. HIGHER ORDER DERIVATIVES
143
Example 3.5.6 Compute y 00 for x3 + y 3 = 4xy. From Example 25 in the last section we found that y0 =
4y − 3x2 3y 2 − 4x
if 3y 2 − 4x 6= 0.
To find y 00 , we differentiate y 0 with respect to x to get y 00 =
(3y 2 − 4x)(4y 0 − 3x2 ) − (4y − 3x2 )(6yy 0 − 4) , 3y 2 − 4x 6= 0. 3y 2 − 4x
In order to simplify any further, we must first replace y 0 by its computed value. We leave this as an exercise. Example 3.5.7 Compute f (n) (c) for the given f and c and all natural numbers n: (i) f (x) = sin x, c = 0
(ii) f (x) = cos x, x = 0
(iii) f (x) = ln(x), c = 1
(iv) f (x) = ex , c = 0
(v) f (x) = sinh x, x = 0
(vi) f (x) = cosh x, x = 0
To compute the general nth derivative formula we must discover a pattern and then generalize the pattern. Part (i) f (x) = sin x, f 0 (x) = cos x, f 00 (x) = − sin x, f 000 (x) = cos x, f 4 (x) = sin x. Then the next four derivatives are repeated and so on. We get f (4n) (n) = sin x, f (4n+1) (x) = cos x, f (4n+2) (x) = − sin x, f (4n+3) (x) = − cos x. By evaluating these at c = 0, we get f (4n) (0) = 0, f (4n+2) (0); f (4n+1) (0) = 1 and f (4n+3) (0) = −1, for n = 0, 1, 2, · · · Part (ii) This part is similar to Part (i) and is left as an exercise. Part (iii) f (x) = ln x, f 0 (x) = x−1 , f 00 (x) = (−1)x−2 , f (3) (x) = (−1)(−2)x−3 , . . . ., f (n) (x) = (−1)(−2) . . . (−(n − 1))x−n = (−1)n−1 (n − 1)!x−n , f (n) (1) = (−1)n−1 (n − 1)!, n = 1, 2, . . .
144
CHAPTER 3. DIFFERENTIATION
Part (iv) f (x) = ex , f 0 (x) = ex , f 00 (x) = ex , . . . , f (n) (x) = ex , f (n) (0) = 1, n = 0, 1, 2, . . . Part (v) f (x) = sinh x, f 0 (x) = cosh x, f 00 (x) = sinh x, . . . f (2n) (x) = sinh x, f (2n+1) (x) = cosh x, f (2n) (0) = 0, f (2n+1) (0) = 1, n = 0, 1, 2, . . . Part (vi) f (x) = cosh x, f 0 (x) = sinh x, f 00 (x) = cosh x, . . . , f (2n) (x) = cosh x, f (2n+1) (x) = sinh x, f (2n) (0) = 1, f (2n+1) (0) = 0, n = 0, 1, 2, . . .
Exercises 3.5 Find the first two derivatives of each of the following functions f . 1. f (t) = 4t3 â&#x2C6;&#x2019; 3t2 + 10
2. f (x) = 4 sin(3x) + 3 cos(4x)
3. f (x) = (x2 + 1)3
4. f (x) = x2 sin(3x)
5. f (x) = e3x sin 4x
6. f (x) = e2x cos 4x
7. f (x) =
x2 2x + 1
8. f (x) = (x2 + 1)10
9. f (x) = ln(x2 + 1)
10. f (x) = log10 (x4 + 1)
11. f (x) = 3 sinh(4x) + 5 cosh(4x)
12. f (x) = tanh(3x)
13. f (x) = x tan x
14. f (x) = x2 ex
15. f (x) = arctan(3x)
16. f (x) = arcsinh (2x)
17. f (x) = cos(nx)
18. f (x) = (x2 + 1)100
Show that the given y(x) satisfies the given equation: 19. y = A sin(4x) + B cos(4x) satisfies y 00 + 16y = 0 20. y = A sinh(4x) + B cosh(4x) satisfies y 00 â&#x2C6;&#x2019; 16y = 0
3.5. HIGHER ORDER DERIVATIVES
145
21. y = e−x (a sin(2x) + b cos(2x)) satisfies y 00 − 2y 0 + 2y = 0 22. y = ex (a sin(3x) + b cos(3x)) satisfies y 00 − 2y 0 + 10y = 0 Compute the general nth derivative for each of the following: 23. f (x) = e2x
24. f (x) = sin 3x
25. f (x) = cos 4x
26. f (x) = ln(x + 1)
27. f (x) = sinh(2x)
28. f (x) = cosh(3x)
29. f (x) = (x + 1)100
30. f (x) = ln
1+x 1−x
Find y 0 and y 00 for the following equations: 31. x4 + y 4 = 20
32. x2 + xy + y 2 = 16
Chapter 4 Applications of Differentiation One of the important problems in the real world is optimization. This is the problem of maximizing or minimizing a given function. Differentiation plays a key role in solving such real world problems.
4.1
Mathematical Applications
Definition 4.1.1 A function f with domain D is said to have an absolute maximum at c if f (x) ≤ f (c) for all x ∈ D. The number f (c) is called the absolute maximum of f on D. The function f is said to have a local maximum (or relative maximum) at c if there is some open interval (a, b) containing c and f (c) is the absolute maximum of f on (a, b).
Definition 4.1.2 A function f with domain D is said to have an absolute minimum at c if f (c) ≤ f (x) for all x in D. The number f (c) is called the absolute minimum of f on D. The number f (c) is called a local minimum (or relative minimum) of f if there is some open interval (a, b) containing c and f (c) is the absolute minimum of f on (a, b).
Definition 4.1.3 An absolute maximum or absolute minimum of f is called an absolute extremum of f . A local maximum or minimum of f is called a local extremum of f .
146
4.1. MATHEMATICAL APPLICATIONS
147
Theorem 4.1.1 (Extreme Value Theorem) If a function f is continuous on a closed and bounded interval [a, b], then there exist two points, c1 and c2 , in [a, b] such that f (c1 ) is the absolute minimum of f on [a, b] and f (c2 ) is the absolute maximum of f on [a, b]. Proof. Since [a, b] is a closed and bounded set and f is continuous on [a, b], Theorem 4.1.1 follows from Theorem 2.3.14. Definition 4.1.4 A function f is said to be increasing on an open interval (a, b) if f (x1 ) < f (x2 ) for all x1 and x2 in (a, b) such that x1 < x2 . The function f is said to be decreasing on (a, b) if f (x1 ) > f (x2 ) for all x1 and x2 in (a, b) such that x1 < x2 . The function f is said to be non-decreasing on (a, b) if f (x1 ) â&#x2030;¤ f (x2 ) for all x1 and x2 in (a, b) such that x1 < x2 . The function f is said to be non-increasing on (a, b) if f (x1 ) â&#x2030;Ľ f (x2 ) for all x1 and x2 in (a, b) such that x1 < x2 .
Theorem 4.1.2 Suppose that a function f is defined on some open interval (a, b) containing a number c such that f 0 (c) exists and f 0 (c) 6= 0. Then f (c) is not a local extremum of f . 1 Proof. Suppose that f 0 (c) 6= 0. Let = |f 0 (c)|. Then > 0. 2 Since > 0 and f (x) â&#x2C6;&#x2019; f (c) f 0 (c) = lim , xâ&#x2020;&#x2019;c xâ&#x2C6;&#x2019;c there exists some δ > 0 such that if 0 < |x â&#x2C6;&#x2019; c| < δ, then
f (x) â&#x2C6;&#x2019; f (c)
1 0
â&#x2C6;&#x2019; f (c)
< |f 0 (c)|
xâ&#x2C6;&#x2019;c 2 1 f (x) â&#x2C6;&#x2019; f (c) 1 â&#x2C6;&#x2019; f 0 (c) < |f 0 (c)| â&#x2C6;&#x2019; |f 0 (c)| < 2 xâ&#x2C6;&#x2019;c 2 1 f (x) â&#x2C6;&#x2019; f (c) 1 f 0 (c) â&#x2C6;&#x2019; |f 0 (c)| < < f 0 (c) + |f 0 (c)|. 2 xâ&#x2C6;&#x2019;c 2 The following three numbers have the same sign, namely, f 0 (c), f 0 (c) â&#x2C6;&#x2019;
1 1 0 |f (c)| and f 0 (c) + |f 0 (c)|. 2 2
148
CHAPTER 4. APPLICATIONS OF DIFFERENTIATION
Since f 0 (c) > 0 or f 0 (c) < 0, we conclude that 0<
f (x) − f (c) x−c
or
f (x) − f (c) <0 x−c
for all x such that 0 < |x − c| < δ. Thus, if c − δ < x1 < c < x2 < c + δ, then either f (x1 ) < f (c) < f (x2 ) or f (x1 ) > f (c) > f (x2 ). It follows that f (c) is not a local extremum. Theorem 4.1.3 If f is defined on an open interval (a, b) containing c, f (c) is a local extremum of f and f 0 (c) exists, then f 0 (c) = 0. Proof. This theorem follows immediately from Theorem 4.1.2. Theorem 4.1.4 (Rolle’s Theorem) Suppose that a function f is continuous on a closed and bounded interval [a, b], differentiable on the open interval (a, b) and f (a) = f (b). Then there exists some c such that a < c < b and f 0 (c) = 0. Proof. Since f is continuous on [a, b], there exist two numbers c1 and c2 on [a, b] such that f (c1 ) ≤ f (x) ≤ f (c2 ) for all x in [a, b]. (Extreme Value Theorem.) If f (c1 ) = f (c2 ), then the function f has a constant value on [a, b] and f 0 (c) = 0 for c = 21 (a + b). If f (c1 ) 6= f (c2 ), then either f (c1 ) 6= f (a) or f (c2 ) 6= f (a). But f 0 (c1 ) = 0 and f 0 (c2 ) = 0. It follows that f 0 (c1 ) = 0 or f 0 (c2 ) = 0 and either c1 or c2 is between a and b. This completes the proof of Rolle’s Theorem. Theorem 4.1.5 (The Mean Value Theorem) Suppose that a function f is continuous on a closed and bounded interval [a, b] and f is differentiable on the open interval (a, b). Then there exists some number c such that a < c < b and f (b) − f (a) = f 0 (c). b−a Proof. We define a function g(x) that is obtained by subtracting the line joining (a, f, (a)) and (b, f (b)) from the function f : f (b) − f (a) g(x) = f (x) − (x − a) + f (a) . b−a
4.1. MATHEMATICAL APPLICATIONS
149
The g is continuous on [a, b] and differentiable on (a, b). Furthermore, g(a) = g(b) = 0. By Rolle’s Theorem, there exists some number c such that a < c < b and 0 = g 0 (c) = f 0 (c) −
f (b) − f (a) . b−a
Hence, f (b) − f (a) = f 0 (c) b−a as required. Theorem 4.1.6 (Cauchy-Mean Value Theorem) Suppose that two functions f and g are continuous on a closed and bounded interval [a, b], differentiable on the open interval (a, b) and g 0 (x) 6= 0 for all x in (a, b). Then there exists some number c in (a, b) such that f 0 (c) f (b) − f (a) = 0 . g(b) − g(a) g (c) Proof. We define a new function h on [a, b] as follows: h(x) = f (x) − f (a) −
f (b) − f (a) (g(x) − g(a)). g(b) − g(a)
Then h is continuous on [a, b] and differentiable on (a, b). Furthermore, h(a) = 0 and h(b) = 0. By Rolle’s Theorem, there exist some c in (a, b) such that h0 (c) = 0. Then 0 = h0 (c) = f 0 (c) − and, hence,
f (b) − f (a) 0 g (c) g(b) − g(a)
f (b) − f (a) f 0 (c) = 0 g(b) − g(c) g (c)
as required. This completes the proof of Theorem 4.1.6.
150
CHAPTER 4. APPLICATIONS OF DIFFERENTIATION
Theorem 4.1.7 (L’Hospital’s Rule, 00 Form) Suppose f and g are differentiable and g 0 (x) 6= 0 on an open interval (a, b) containing c (except possibly at c). Suppose that lim f (x) = 0 ,
x→c
lim g(x) = 0 and
x→c
lim
x→c
f 0 (x) = L, g 0 (x)
where L is a real number, ∞, or −∞. Then lim
x→c
f (x) f 0 (x) = lim 0 = L. g(x) x→c g (x)
Proof. We define f (c) = 0 and g(c) = 0. Let x ∈ (c, b). Then f and g are continuous on [c, x], differentiable on (c, x) and g 0 (y) 6= 0 on (c, x). By the Cauchy Mean Value Theorem, there exists some point y ∈ (c, x) such that f (x) f (x) − f (c) f 0 (y) = = 0 . g(x) g(x) − g(c) g (y) Then lim+
x→c
f (x) f 0 (y) = lim+ 0 = L. g(x) y→c g (y)
Similarly, we can prove that lim−
x→c
Therefore, lim
x→c
f (x) = L. g(x)
f (x) f 0 (x) = lim 0 = L. g(x) x→c g (x)
Remark 12 Theorem 4.1.7 is valid for one-sided limits as well as the twosided limit. This theorem is also true if c = ∞ or c = −∞. Theorem 4.1.8 Theorem 4.1.7 is valid for the case when lim f (x) = ∞ or
x→c
− ∞ and
Proof of Theorem 4.1.8 is omitted.
lim g(x) = ∞ or − ∞.
x→c
4.1. MATHEMATICAL APPLICATIONS
151
Example 4.1.1 Find each of the following limits using L’Hospital’s Rule. (i) lim
sin 3x sin 5x
(ii) lim
tan 2x tan 3x
(iii) lim
(iv) lim
x sin x
(v) lim
1 − cos x x
(vi) lim x ln x
x→0
x→0
x→0
x→0
x→0
sin x x
x→0
We compute these limits as follows: (i) lim
sin 3x 3 cos 3x 3 = lim = sin 5x x→0 5 cos 5x 5
(ii) lim
2 sec2 x 2 tan 2x = lim = 2 tan 3x x→0 3 sec 3x 3
(iii) lim
cos x sin x = lim =1 x→0 x 1
(iv) lim
x 1 = lim =1 sin x x→0 cos x
(v) lim
sin x 1 − cos x = lim =0 x→0 x 1
x→0
x→0
x→0
x→0
x→0
ln x (vi) lim x ln x = lim 1 = lim x→0
x→0
x
x→0
1 x −1 x2
= lim (−x) = 0. x→0
Theorem 4.1.9 Suppose that two functions f and g are continuous on a closed and bounded interval [a, b] and are differentiable on the open interval (a, b). Then the following statements are true: (i) If f 0 (x) > 0 for each x in (a, b), then f is increasing on (a, b). (ii) If f 0 (x) < 0 for each x in (a, b), then f is decreasing on (a, b). (iii) If f 0 (x) ≥ 0 for each x in (a, b), then f is non-decreasing on (a, b). (iv) If f 0 (x) ≤ 0 for each x in (a, b), then f is non-increasing on (a, b). (v) If f 0 (x) = 0 for each x in (a, b), then f is constant on (a, b).
152
CHAPTER 4. APPLICATIONS OF DIFFERENTIATION
(vi) If f 0 (x) = g 0 (x) on (a, b), then f (x) = g(x)+C, for constant C, on (a, b). Proof. Part (i) Suppose a < x1 < x2 < b. Then f is continuous on [x1 , x2 ] and differentiable on (x1 , x2 ). By the Mean Value Theorem, there exists some c such that a < x1 < c < x2 < b and f (x2 ) − f (x1 ) = f 0 (c) > 0. x2 − x1 Since x2 − x1 > 0, it follows that f (x2 ) − f (x1 ) > 0 and f (x2 ) > f (x1 ). By definition, f is increasing on (a, b). The proof of Parts (ii)–(v) are similar and are left as an exercise. Part (vi) Let F (x) = f (x) − g(x) for all x in [a, b]. Then F is continuous on [a, b] and differentiable on (a, b). Furthermore, F 0 (x) = 0 on (a, b). Hence, by Part (v), there exists some constant C such that for each x in (a, b), F (x) = C, f (x) − g(x) = c, f (x) = g(x) + C. This completes the proof of the theorem. Theorem 4.1.10 (First Derivative Test for Extremum) Let f be continuous on an open interval (a, b) and a < c < b. (i) If f 0 (x) > 0 on (a, c) and f 0 (x) < 0 on (c, b), then f (c) is a local maximum of f on (a, b). (ii) If f 0 (x) < 0 on (a, c) and f 0 (x) > 0 on (c, b), then f (c) is a local minimum of f on (a, b). Proof. This theorem follows immediately from Theorem 4.1.9 and its proof is left as an exercise. Theorem 4.1.11 (Second Derivative Test for Extremum) Suppose that f, f 0 and f 00 exist on an open interval (a, b) and a < c < b. Then the following statements are true: (i) If f 0 (c) = 0 and f 00 (c) > 0, then f (c) is a local minimum of f . (ii) If f 0 (c) = 0 and f 00 (c) < 0, then f (c) is a local maximum of f .
4.1. MATHEMATICAL APPLICATIONS
153
(iii) If f 0 (c) = 0 and f 00 (c) = 0, then f (c) may or may not be a local extremum. Proof. Part (i) If f 00 (c) > 0, then by Theorem 4.1.2, there exists some δ > 0 such that for all x in (c − δ, c + δ), f 0 (c) f 0 (x) − f 0 (c) = > 0. x−c x−c Hence, f 0 (x) > 0 on (c, c + δ) and f 0 (x) < 0 on (c − δ, c). By the first derivative test, f (c) is a local minimum of f . Part (ii) The proof of Part (ii) is similar to Part (i) and is left as an exercise. Part (iii) Let f (x) = x3 and g(x) = x4 . Then f 0 (0) = g 0 (0) = f 00 (0) = g 00 (0). However, f has no local extremum at 0 but g has a local maximum at 0. This completes the proof of this theorem. Definition 4.1.5 (Concavity) Suppose that f is defined in some open interval (a, b) containing c and f 0 (c) exists. Let y = g(x) = f 0 (c)(x − c) + f (c) be the equation of the line tangent to the graph of f at c. (i) If there exists δ > 0 such that f (x) > g(x) for all x in (c−δ, c+δ), x 6= c, then the graph of f is said to be concave upward at c. If the graph of f is concave upward at every c in (a, b), then it is said to be concave upward on (a, b). (ii) If there exists δ > 0 such that f (x) < g(x) for all x in (c−δ, c+δ), x 6= c, then the graph of f is said to be concave downward at c. If the graph of f is concave downward at every c in (a, b), then it is said to be concave downward on (a, b). (iii) The point (c, f (c)) is said to be a point of inflection if there exists some δ > 0 such that either
154
CHAPTER 4. APPLICATIONS OF DIFFERENTIATION (i) the graph of f is concave upward on (c − δ, c) and concave downward on (c, c + δ), or (ii) the graph of f is concave downward on (c − δ, c) and concave upward on (c, c + δ).
Remark 13 The first derivative test, second derivative test and concavity test are very useful in graphing functions. Example 4.1.2 Let f (x) = x4 − 4x2 , −3 ≤ x ≤ 3 (a) Locate the local extrema, and point extrema and points of inflections. (b) Locate the intervals where the graph of f is increasing, decreasing, concave up and concave down. (c) Sketch the graph of f . Determine the absolute maximum and the absolute minimum of the graph of f on [−3, 3]. Part (a) (i) f (x) = x4 − 4x2 = x2 (x2 − 4) = 0 → x = 0, x = −2, x = 2 are zeros of f . √ √ (ii) f 0 (x) = 4x3 − 8x = 0 = 4x(x2 − 2) = 0 → x = 0, x = − 2 and x = 2 are the critical points of f . 1 1 1 00 2 2 = 0 → x = − √ and x = √ are (iii) f (x) = 12x − 4 = 12 x − 3 3 3 the x-coordinates of the points of inflections of the graph of f , since f 00 changes sign at these points. (iv) f 0 (0) = 0, f 00 (0) = −4 → f (0) = 0 is a local minimum of f . √ √ √ f 0 (− 2) = 0, f 00 (− 2) > 0 → f (− 2) = −8 is a local minimum of f . √ √ √ f 0 ( 2) = 0, f 00 ( 2) > 0 → f ( 2) = −8 is a local minimum of f . 1 1 −11 00 (v) f (x) changes sign at x = ± √ and hence ± √ , are the points 3 3 9 of inflection of the graph of f .
4.1. MATHEMATICAL APPLICATIONS
155
√ √ Part (b) The function f is decreasing on (−∞, − 2) ∪ (0, 2) and is increasing √ √ −1 ∪ on (− 2, 0) ∪ ( 2, ∞). The graph of f is concave up on −∞, √ 3 1 −1 1 √ , ∞ and is concave down on √ , √ . 3 3 3 (c)
f (−3) = f (3) = 45 is the absolute maximum of f and is obtained at the end points of the interval. √ √ Also, f (− 2) = f ( 2) = −8 is the absolute minimum of f on [−3, 3]. We note that f (0) = 0 is a local maximum of f . The graph is sketched with the above information.
graph
Example 4.1.3 Consider g(x) = x2 −x2/3 , −2 ≤ x ≤ 3. Sketch the graph of g, locating extrema, zeros, points of inflection, intervals where f is increasing or decreasing, and intervals where the graph of f is concave up or concave down. Let us compute the zeros and critical points of g. (i) g(x) = x2/3 (x4/3 − 1) = 0 → x = 0, −1, 1. 3/4 1 1 2 −1/3 −1/3 4/3 0 = 2x x − =0→x=± . g (x) = 2x − x 3 3 3 3/4 1 0 We note that g (0) is undefined. The critical points are, 0, ± . 3 2 (ii) g 00 (x) = 2 + x−4/3 > 0 for all x, except x = 0, where g 00 (x) does not 9 exist. 3/4 ! 3/4 ! 1 1 The function g is decreasing on −∞, − and 0, . 3 3 ! 3/4 ! 3/4 1 1 The function g is increasing on − ,0 ∪ ,∞ . 3 3
156
CHAPTER 4. APPLICATIONS OF DIFFERENTIATION
(iii) The point (0, 0) is not an inflection point, since the graph is concave up everywhere on (−∞, 0) ∪ (0, ∞). Exercises 4.1 Verify that each of the following Exercises 1–2 satisfies the hypotheses and the conclusion of the Mean Value Theorem. Determine the value of the admissible c. 1. f (x) = x2 − 4x, −2 ≤ x ≤ 2 2. g(x) = x3 − x2 on [−2, 2] 3. Does the Mean Value Theorem apply to y = x2/3 on [−8, 8]? If not, why not? 4. Show that f (x) = x2 − x3 cannot have more than two zeros by using Rolle’s Theorem. 5. Show that f (x) = ln x is an increasing function. (Use Mean Value Theorem.) 6. Show that f (x) = e−x is a decreasing function. 7. How many real roots does f (x) = 12x4 − 14x2 + 2 have? 8. Show that if a polynomial has four zeros, then there exists some c such that f 000 (c) = 0. A function f is said to satisfy a Lipschitz condition with constant M if |f (x) − f (y)| ≤ M |x − y| for all x and y. The number M is called a Lipschitz constant for f . 9. Show that f (x) = sin x satisfies a Lipschitz condition. Find a Lipschitz constant. 10. Show that g(x) = cos x satisfies a Lipschitz condition. Find a Lipschitz constant for g. In each of the following exercises, sketch the graph of the given function over the given interval. Locate local extrema, absolute extrema, intervals where the function is increasing, decreasing, concave up or concave down. Locate the points of inflection and determine whether the points of inflection are oblique or not.
4.2. ANTIDIFFERENTIATION 11. f (x) =
157
x2 , [−1, 1] 2x2 + 1
12. f (x) = x2 (1 − x)2 , [−2, 2] 1 , [−1, 1] x2
13. f (x) = |x − 1| + 2|x + 2|, [−4, 4]
14. f (x) = 2x2 +
15. f (x) = sin x − cos x, [0, 2π]
16. f (x) = x − cos x, [0, 2π]
17. f (x) =
2x , [−4, 4] x2 − 9
18. f (x) = 2x3/5 − x6/5 , [−2, 2]
2
19. f (x) = (x2 − 1)e−x , [−2, 2]
20. f (x) = 3 sin 2x + 4 cos 2x, [0, 2π]
Evaluate each of the following limits by using the L’Hospital’s Rule. 21. lim
sin 3x tan 5x
22. lim
x + sin πx x − sin πx
23. lim
x ln x 1−x
24. lim
ex − 1 ln(x + 1)
25. lim
ex − 1 x
27. lim
sin 3x sinh(5x)
29. lim
x + tan x x + sin x
x→0
x→1
x→0
x→0
x→0
4.2
x→0
x→0
10x − 1 x→0 x 1 28. lim − csc x x→0 x 26. lim
30. lim
x→1
(1 − x2 ) (1 − x3 )
Antidifferentiation
The process of finding a function g(x) such that g(x) = f (x), for a given f (x), is called antidifferentiation. Definition 4.2.1 Let f and g be two continuous functions defined on an open interval (a, b). If g 0 (x) = f (x) for each x in (a, b), then g is called an antiderivative of f on (a, b).
158
CHAPTER 4. APPLICATIONS OF DIFFERENTIATION
Theorem 4.2.1 If g1 (x) and g2 (x) are any two antiderivatives of f (x) on (a, b), then there exists some constant C such that g1 (x) = g2 (x) + C. Proof. If h(x) = g1 (x) − g2 (x), then h0 (x) = g10 (x) − g20 (x) = f (x) − f (x) =0 for all x in (a, b). By Theorem 4.1.9, Part (iv), there exists some constant c such that for all x in (a, b), C = h(x) = g1 (x) − g2 (x) g2 (x) = g1 (x) + C. Definition 4.2.2 If g(x) is an antiderivative of f on (a, b), then the set {g(x)+C : C is a constant} is called a one-parameter family of antiderivatives of f . We called this one-parameter family of antiderivatives the indefinite integral of f (x) on (a, b) and write Z f (x)dx = g(x) + C. R The expression “ f (x)dx” is read as “the indefinite integral R of f (x) with respect to x.” The function “f (x)” is called the integrand, “ ” is called the integral sign and “x” is called the variable of integration. When dealing with indefinite integrals, we often use the terms antidifferentiation and integration interchangeably. By definition, we observe that Z d f (x)dx = g 0 (x) = f (x). dx Example 4.2.1 The following statements are true: Z Z 1 4 xn+1 3 1. x dx = x + c 2. xn dx = + c, n 6= −1 4 n+1
4.2. ANTIDIFFERENTIATION 3.
Z
1 dx = ln |x| + c x
5.
Z
−1 sin(ax)dx = cos(ax) + c a
7.
Z
1 cos(ax)dx = sin(ax) + c a
9.
Z
1 tan(ax)dx = ln | sec(ax)| + c a
11.
Z
13.
Z
15.
Z
sinh xdx = cosh x + c
17.
Z
tanh x dx = ln | cosh x| + c
18.
Z
coth x dx = ln | sinh x| + c
19.
Z
sinh(ax) =
20.
Z
cosh(ax)dx =
1 sinh(ax) + c a
21.
Z
tanh(ax)dx =
1 ln | cosh ax| + c a
22.
Z
1 cot(ax)dx = ln | sin(ax)| + c a −x
e dx = −e
−x
+c
1 cosh(ax) + c a
coth (ax)dx =
1 ln | sinh(ax)| + c a
159 4.
Z
sin x dx = − cos x + c
6.
Z
cos x dx = sin x + c
8.
Z
tan x dx = ln | sec x| + c
10.
Z
cot x dx = ln | sin x| + c
12.
Z
ex dx = ex + c
14.
Z
eax dx =
16.
Z
cosh x dx = sinh x + c
1 ax e +c a
160
CHAPTER 4. APPLICATIONS OF DIFFERENTIATION
23.
Z
sec x dx = ln | sec x + tan x| + c
24.
Z
csc x dx = − ln | csc x + cot x| + c
25.
Z
sec(ax)dx =
1 ln | sec(ax) + tan(ax)| + c a
26.
Z
csc(ax)dx =
−1 ln | csc(ax) + cot(ax)| + c a
27.
Z
sec2 xdx = tan x + c
28.
Z
sec2 (ax)dx =
29.
Z
csc2 x dx = − cot x + c
30.
Z
csc2 (ax)dx =
31.
Z
tan2 x dx = tan x − x + c
32.
Z
cot2 x dx = − cot x − x + c
33.
Z
1 1 sin x dx = (x − sin x cos x) + c = 2 2
sin 2x x− +c 2
34.
Z
1 1 cos xdx = (x + sin x cos x) + c = 2 2
sin 2x x+ +c 2
35.
Z
sec x tan x dx = sec x + c
1 tan(ax) + c a
−1 cot(ax) + c a
2
3
4.2. ANTIDIFFERENTIATION 36.
Z
161
csc x cot x dx = − csc x + c
Each of these indefinite integral formulas can be proved by differentiating the right sides of the equation. We show some details in selected cases. Part 3. Recall that x |x| d (|x|) = = , x 6= 0. dx |x| x Hence, 1 d (ln |x| + c) = · dx |x|
|x| 1 +0 = . x x
The absolute values are necessary because ln(x) is defined for positive numbers only. Part 23.
1 d (ln | sec x + tan x|) = · (sec x tan x + sec2 x) dx sec x + tan x sec x(tan x + sec x) (sec x + tan x) = sec x. =
Part 31.
d (tan x − x + c) = sec2 x − 1 = tan2 x. dx
d Part 33. dx
d = dx
1 (x − sin x cos x) + c 2
x sin 2x − 2 4
=
1 2 cos 2x − 2 4
=
1 (1 − cos x) 2
= sin2 x
(Trigonometric Identity)
(Trigonometric Identity)
162
CHAPTER 4. APPLICATIONS OF DIFFERENTIATION
d Part 34. dx
d = dx
1 (x + sin x cos x) + c 2
x sin 2x + 2 4
=
1 1 + cos 2x 2 2
=
1 (1 + cos 2x) 2
= cos2 x
(Trigonometric Identity)
Example 4.2.2 The following statements are true: Z Z √ x 1 √ √ dx = arcsin x + c 2. dx = − 1 − x2 + c 1. 1 − x2 1 − x2 Z Z √ 1 1 √ √ 3. dx = arcsinh x + c 4. dx = 1 + x2 + c 1 + x2 1 + x2 √ 2 = ln(x + 1 + x ) + c 5.
Z
1
√ dx = arccosh x + c x2 − 1 √ = ln |x + x2 − 1| + c
6.
7.
Z
1 dx = arctan x + c 1 + x2
8.
Z
9.
Z
1 √ dx = arcsec x + c |x| x2 − 1
10.
Z
Z
√ x √ dx = x2 − 1 + c x2 − 1
1 dx = arctanh x + c 1 − x2
1 + x
1
+c = ln
2 1 − x
bx dx =
bx + c, b > 0, b 6= 1 ln b
All of these integration formulas can be verified by differentiating the right sides of the equations.
4.2. ANTIDIFFERENTIATION
163
Remark 14 In the following exercises, use the substitution to reduce the integral to a familiar form and then use the integral tables if necessary. Exercises 4.2 In each of the following, evaluate the indefinite integral by using the given substitution. Use the formula: Z Z 0 f (g(t))g (t)dt = f (u)du, where u = g(t), du = g 0 (t)dt. 1.
Z
1 √ dx, x = 2 sin t 4 − x2
3.
Z
1 √ dx, x = 3 tan t 9 + x2
5.
Z
7.
Z
9.
Z
xe
−x2
dx, u = −x
2
2
sec (3x + 1)dx, u = 3x + 1 2
2
x sin (x )dx, u = x
2
11.
Z
13.
Z
x(x + 1) dx, u = x + 1
15.
Z
1 dx, u = ex ex + e−x
17.
Z
19.
Z
sec(2x − 3) tan(2x − 3)dx, u = 2x − 3 2
10
2
3
sin (2x) cos 2x dx, u = sin 2x 2
sec x tan x dx, u = sec x
2.
Z
1 √ dx, x = 2 cosh t 4 + x2
4.
Z
1 √ dx, x = 3 sec t x x2 − 9
6.
Z
sin(7x + 1)dx; u = 7x + 1
8.
Z
cos2 (2x + 1)dx, u = 2x + 1
10.
Z
tan2 (5x + 7)dx, u = 5x + 7
12.
Z
cot(5x + 2)dx, u = 5x + 2
14.
Z
(x2
16.
Z
e2x − e−2x dx, u = e2x + e−2x e2x + e−2x
18.
Z
esin 3x cos 3x dx, u = sin 3x
20.
Z
tan10 x sec2 x dx, u = tan x
x dx, u = x2 + 1 1/3 + 1)
164
CHAPTER 4. APPLICATIONS OF DIFFERENTIATION
21.
Z
x ln(x2 + 1) dx, u = ln(x2 + 1) x2 + 1
23.
Z
x dx √ , u = 4 − x2 2 4−x
25.
Z
1 √ dx, u = 2 sinh x 4 + x2
4.3
22.
Z
x √ dx, u = 4 + x2 4 + x2
24.
Z
x dx, u = 9 + x2 9 + x2
26.
Z
1 √ dx, u = 2 cosh x 2 x −4
Linear First Order Differential Equations
Definition 4.3.1 If p(x) and q(x) are defined on some open interval, then an equation of the form dy + p(x)y = q(x) dx is called a linear first order differential equation in the variable y. Example 4.3.1 (Exponential Growth). A model for exponential growth is the first order differential equation dy = ky, k > 0, y(0) = y0 . dx To solve this we divide by y, integrate both sides with respect to x, equation dy dx by dy as follows: replacing dx Z
1 y
dy dx Z
dx =
Z
k dx
1 dy = kx + c y ln |y| = kx + c |y| = ekx+c = ec ekx y = ±ec ekx .
4.3. LINEAR FIRST ORDER DIFFERENTIAL EQUATIONS
165
Next, we impose the condition y(0) = y0 to get y(0) = Âąec = y0 y = y0 ekx . The number y0 is the value of y at x = 0. If the variable x is replaced by the time variable t, we get y(t) = y(0)ekt . If k > 0, this is an exponential growth model. If k < 0, this is an example of an exponential decay model. Theorem 4.3.1 (Linear First Order Differential Equations) If p(x) and q(x) are continuous, then the differential equation dy + p(x)y = q(x) dx
(1)
has the one-parameter family of solutions Z R R p(x)dx â&#x2C6;&#x2019; p(x)dx q(x)e dx + c . y(x) = e R
Proof. We multiply the given differential equation (1) by e called the integrating factor. R
e
p(x)dx dy
dx
R
+ p(x)e
p(x)dx
R
y = q(x)e
p(x)dx
.
p(x)dx
, which is
(2)
Since the integrating factor is never zero, the equation (2) has exactly the same solutions as equation (1). Next, we observe that the left side of the equation is the derivative of the product the integrating factor and y: R d R p(x)dx e y = q(x)e p(x)dx . dx
(3)
By the definition of the indefinite integral, we express equation (3) as follows: Z R R p(x)dx e y= q(x)e p(x)dx dx + c. (4)
166
CHAPTER 4. APPLICATIONS OF DIFFERENTIATION R
Next, we multiply both sides of equation (4) by e− p(x)dx : Z R R p(x)dx − p(x)dx q(x)e dx + c . y=e
(5)
Equation (5) gives a one-parameter family of solutions to the equation. To pick a particular member of the family, we specify either a point on the curve, or the slope at a point of the curve. That is, y(0) = y0
or y 0 (0) = y00 .
Then c is uniquely determined. This completes the proof. Example 4.3.2 Solve the differential equation y 0 + 4y = 10 , y(0) = 200. Step 1. We multiply both sides by the integrating factor R
e e4x
4dx
= e4x
dy + 4e4x y = 10e4x . dx
(6)
Step 2. We observe that the left side is the derivative of the integrating factor and y. d (e4x y) = 10e4x . (7) dx Step 3. Using the definition of the indefinite integral, we antidifferentiate: Z 4x e y = (10e4x )dx + c. Step 4. We multiply both sides by e−4x . Z 4x −4x (10e )dx + c y=e e4x −4x y=e 10 · +c 4 y(x) =
10 + ce−4x . 4
(8)
4.3. LINEAR FIRST ORDER DIFFERENTIAL EQUATIONS
167
Step 5. We impose the condition y(0) = 200 to solve for c. y(0) = 200 =
5 + c, 2
5 c = 200 − . 2
Step 6. We replace c by its value in solution (8) 5 5 −4x y(x) = + 200 − e . 2 2 Exercises 4.3 Find y(t) in each of the following: 1.
y 0 = 4y, y(0) = 100
2. y 0 = −2y, y(0) = 1200
3.
y 0 = −4(y − c), y(0) = y0
4. L
5.
y 0 + 3y(t) = 32, y(0) = 0
6. y 0 = ty, y(0) = y0
dy + Ry = E, y(0) = y0 dt
Z Z Z 1 dy 1 t2 0 Hint: y = ty, dt = tdt; dy = + c. y dt y 2 7. The population P (t) of a certain country is given by the equation: P 0 (t) = 0.02P (t),
P (0) = 2 million.
(i) Find the time when the population will double. (ii) Find the time when the population will be 3 million. 8. Money grows at the rate of r% compounded continuously if r A0 (t) = A(t), A(0) = A0 , 100 where A(t) is the amount of money at time t. (i) Determine the time when the money will double. (ii) If A = $5000, determine the time for which A(t) = $15,000.
168
CHAPTER 4. APPLICATIONS OF DIFFERENTIATION
9. A radioactive substance satisfies the equation A0 (t) = −0.002A(t),
A(0) = A0 ,
where t is measured in years. 1 (i) Determine the time when A(t) = A0 . This time is called the 2 half-life of the substance. (ii) If A0 = 20 grams, find the time t for which A(t) equals 5 grams. 10. The number of bacteria in a test culture increases according to the equation N 0 (t) = rN (t), n(0) = N0 , where t is measured in hours. Determine the doubling period. If N0 = 100, r = 0.01, find t such that N (t) = 300. 11. Newton’s law of cooling states that the time rate of change of the temperature T (t) of a body is proportional to the difference between T and the temperature A of the surrounding medium. Suppose that K stands for the constant of proportionality. Then this law may be expressed as T 0 (t) = K(A − T (t)). Solve for T (t) in terms of time t and T0 = T (0). 12. In a draining cylindrical tank, the level y of the water in the tank drops according to Torricelli’s law y 0 (t) = −Ky 1/2 for some constant K. Solve for y in terms of t and K. 13. The rate of change P 0 (t) of a population P (t) is proportional to the square root of P (t). Solve for P (t). 14. The rate of change v 0 (t) of the velocity v(t) of a coasting car is proportional to the square of v. Solve for v(t). In exercises 15–30, solve for y.
4.4. LINEAR SECOND ORDER HOMOGENEOUS DIFFERENTIAL EQUATIONS169 15. y 0 = x − y, y(0) = 5
16. y 0 + 3x2 y = 0, y(0) = 6
17. xy 0 (x) + 3y(x) = 2x5 , y(2) = 1
18. xy 0 + y = 3x2 , y(1) = 4
19. y 0 + y = ex , y(0) = 100
20. y 0 = −6xy, y(0) = 9
21. y 0 = (sin x)y, y(0) = 5
22. y 0 = xy 3 , y(0) = 2
√ 1+ x 23. y = √ , y(0) = 10 1+ y
24. y 0 − 2y = 1, y(1) = 3
25. y 0 = ry − c, y(0) = A
26. y 0 − 3y = 2 sin x, y(0) = 12
27. y 0 − 2y = 4e2x , y(0) = 4
28. y 0 − 3x2 y = ex , y(0) = 7
0
29. y 0 −
4.4
1 y = sin x, y(1) = 3 2x
3
30. y 0 − 3y = e2x , y(0) = 1
Linear Second Order Homogeneous Differential Equations
Definition 4.4.1 A linear second order differential equation in the variable y is an equation of the form y 00 + p(x)y 0 + q(x)y = r(x). If r(x) = 0, we say that the equation is homogeneous; otherwise it is called non-homogeneous. If p(x) and q(x) are constants, we say that the equation has constant coefficients. Definition 4.4.2 If f and g are differentiable functions, then the Wronskian of f and g is denoted W (f, g) and defined by W (f, g) = f (x)g 0 (x) − f 0 (x)g(x). Example 4.4.1 Compute the following Wronskians:
170
CHAPTER 4. APPLICATIONS OF DIFFERENTIATION
(i) W (sin(mx), cos(mx)) (iii) W (xn , xm )
(ii) W (epx sin(qx), epx cos(qx)) (iv) W (x sin(mx), x cos(mx))
d d (cos(mx)) − (sin(mx)) cos(mx) dx dx = −m sin2 (mx) − m cos2 (mx) = −m(sin2 (mx) + cos2 (mx)) = −m
Part (i) W (sin mx, cos mx) = sin(mx)
Part (iii) W (epx sin qx, epx cos qx) = epx sin qx(pepx cos qx − qepx sin qx) −epx cos qx(pepx sin qx + qepx cos qx) = −qe2px (sin2 qx + cos2 qx) = −qe2px . Part (iii) W (xn , xm ) = xn · mxm−1 − xm · nxn−1 = (m − n)xn+m−1 . Part (iv) W (x sin mx, x cos mx) = (x sin mx)(cos mx − mx sin mx) −(x cos mx)(sin mx + mx cos mx) = −mx2 (sin2 mx + cos2 mx) = −mx2 . Definition 4.4.3 Two differentiable functions f and g are said to be linearly independent if their Wronskian, W (f (x), g(x)), is not zero for all x in the domains of both f and g. Example 4.4.2 Which pairs of functions in Example 8 are linearly independent? (i) In Part (i), W (sin mx, cos mx) = −m 6= 0 unless m = 0. Therefore, sin mx and cos mx are linearly independent if m 6= 0. (ii) In Part (ii), W (epx sin qx, epx cos qx) = −qe2px 6≡ if q 6= 0. Therefore, epx sin(qx) and epx cos qx are linearly independent if q 6= 0.
4.4. LINEAR SECOND ORDER HOMOGENEOUS DIFFERENTIAL EQUATIONS171 (iii) In Part (iii), W (xn , xm ) = (m − n)xn+m−1 6≡ 0 if m 6= n. Therefore, if m and n are not equal, then xn and xm are linearly independent. (iv) In Part (iv), W (x sin mx, x cos mx) = −mx2 6≡ 0 if m 6= 0. Therefore, x sin mx and x cos mx are linearly independent if m 6= 0. Theorem 4.4.1 Consider the linear homogeneous second order differential equation y 00 + p(x)y 0 + q(x)y = 0. (1) (i) If y1 (x) and y2 (x) are any two solutions of (1), then every linear combination y(x), with constants A and B, y(x) = Ay1 (x) + By2 (x) is also a solution of (1). (ii) If y1 (x) and y2 (x) are any two linearly independent solutions of (1), then every solution y(x) of (1) has the form y(x) = Ay1 (x) + By2 (x) for some constants A and B. Proof. Part (i) Suppose that y1 and y2 are solutions of (1), A and B are any constants. Then (Ay1 + By2 )00 + p(Ay1 + By2 )0 + q(Ay1 + By2 ) = Ay100 + By200 + Apy10 + ABy20 + Aqy1 + BqBy2 = A(y100 + py10 + qy1 ) + B(y200 + py20 + qy2 ) = A(0) + B(0) (Because y1 and y2 are solutions of (1)) = 0. Hence, y = Ay1 + By2 are solutions of (1) whenever y1 and y2 are solutions of (1).
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CHAPTER 4. APPLICATIONS OF DIFFERENTIATION
Part (ii) Let y be any solution of (1) and suppose that y = Ay1 + By2 y 0 = Ay10 + By20
(2) (3)
We solve for A and B from equations (2) and (3) to get yy20 − y2 y 0 W (y, y2 ) = 0 0 y1 y2 − y2 y1 W (y1 , y2 ) 0 0 W (y1 , y) y1 y − y1 y B= = . 0 0 y1 y2 − y2 y1 (y1 , y2 ) A=
Since y1 and y2 are linearly independent, W (y1 , y2 ) 6= 0, and hence, A and B are uniquely determined. Remark 15 It turns out that the Wronskian of two solutions of (1) is either identically zero or never zero for any value of x. Theorem 4.4.2 Let y1 and y2 be any two solutions of the homogeneous equation y 00 + py 0 + qy = 0. (1) Let W (x) = W (y1 , y2 ) = y1 (x)y20 (x) − y10 (x)y2 (x). Then W 0 (x) = −pW (x) W (x) = ce−
R
p(x)dx
for some constant c. If c = 0, then W (x) = 0 for every x. If c 6= 0, then W (x) 6= 0 for every x. Proof. Since y1 and y2 are solutions of (1), y100 = −py10 − qy1 y200 = −py20 − qy2
(2) (3)
4.4. LINEAR SECOND ORDER HOMOGENEOUS DIFFERENTIAL EQUATIONS173 Then, W 0 (x) = (y1 y20 − y10 y2 )0 = y10 y20 + y1 y200 − y100 y2 − y10 y20 = y1 y200 − y2 y100 = y1 (−py20 − qy2 ) − y2 (−py10 − qy1 ) = −p[y1 y20 − y2 y10 ] = −pW (x).
(from (2) and (3))
Thus, W 0 (x) + pW (x) = 0. By Theorem 4.3.1 W (x) = e
−
R
pdx
Z
0 dx + c = ce−
R
pdx
.
If c = 0, W (x) ≡ 0; otherwise W (x) is never zero. Theorem 4.4.3 (Homogeneous Second Order) Consider the linear second order homogeneous differential equation with constant coefficients: ay 00 + by 0 + cy = 0,
a 6= 0.
(1)
(i) If y = emx is a solution of (1), then am2 + bm + c = 0.
(2)
Equation (2) is called the characteristic equation of (1). √ √ −b − b2 − 4ac −b + b2 − 4ac (ii) Let m1 = and m2 = . Then the follow2a 2a ing three cases arise: Case 1. The discriminant b2 − 4ac > 0. Then m1 and m2 are real and distinct. The two linearly independent solutions of (1) are em1 x and em2 x and its general solution has the form y(x) = Aem1 x + Bem2 x .
174
CHAPTER 4. APPLICATIONS OF DIFFERENTIATION Case 2. The discriminant b2 − 4ac = 0. Then m1 = m2 = m, and only one real solution exists for equation (2). The roots are repeated. In this case, emx and xemx are two linearly independent solutions of (1) and the general solution of (1) has the form y(x) = Aemx + Bxemx = emx (A + Bx). Case 3 b2 − 4ac < 0. √ Then m1 = p − iq, and m2 = p + iq where p = −b/2a, and q = 4ac − b2 /2a. In this case, the functions epx sin qx and epx cos qx are two linearly independent solutions of (1) and the most general solution of (1) has the form y(x) = epx (A sin qx + B sin qx).
Proof. Let y = emx . Then y 0 = memx , y 00 = m2 emx and ay 00 + by 0 + cy = (am2 + bm + c)emx = 0, a 6= 0 ↔ am2 + bm + c = 0, a 6= 0 ↔ √ b2 − 4ac −b ± . m= 2a 2a This proves Part (i). Case 1. For Case 1, em1 x and em2 x are solutions of (1). We show that these are linearly independent by showing that their Wronskian is not zero. W (em1 x , em2 x ) = em1 x · m2 em2 x − m1 em1 x · em2 x = (m2 − m1 )e(m1 +m2 )x . Since m1 6= m2 , W (em1 x , em2 x ) 6= 0. Case 2. We already know that emx 6= 0, and m = −b/2a. Let us try y = xemx . Then ay 00 + by 0 + cy = a(2m + m2 x)emx + b(1 + mx)emx + xemx = (b + 2am)emx + (am2 + bm + c)xemx = (b + 2a(−b/2a))emx = 0.
4.4. LINEAR SECOND ORDER HOMOGENEOUS DIFFERENTIAL EQUATIONS175 Therefore, emx and xemx are both solutions. We only need to show that they are linearly independent. W (emx , xemx ) = emx (emx + mxemx ) â&#x2C6;&#x2019; memx (xemx ) = e2mx + mxe2mx â&#x2C6;&#x2019; mxe2mx = e2mx 6= 0. Hence, emx and xemx are linearly independent and the general solution of (1) has the form y(x) = Aemx + Bxemx = emx (A + Bx). Case 3. In Example 8, we showed that W (epx sin qx, epx cos qx) = â&#x2C6;&#x2019;qe2px 6= 0 since q 6= 0. We only need to show that epx sin qx and epx cos qx are solutions of (1). Let y1 = epx sin qx and y2 = epx cos qx. Then, y10 = pepx sin qx + qepx cos qx y100 = p2 epx sin qx + pqepx cos qx + pqepx cos qx â&#x2C6;&#x2019; q 2 sin qx ay100 + by10 + cy1 = aepx (p2 sin qx + 2pq cos qx â&#x2C6;&#x2019; q 2 sin qx) + bepx (p sin qx + q cos qx) + cepx sin qx = epx sin qx[a(p2 â&#x2C6;&#x2019; q 2 ) + (bp + c)] + epx cos qx[2apq + bq] 2 b 4ac â&#x2C6;&#x2019; b2 â&#x2C6;&#x2019;b px = e sin(qx) a â&#x2C6;&#x2019; +c +b 4a2 4a2 2a â&#x2C6;&#x161; â&#x2C6;&#x2019;b px 2 + e cos qx 2a +b 4ac â&#x2C6;&#x2019; b 2a 2 b â&#x2C6;&#x2019; 2ac + b2 + 2ac px = e sin(qx) 2a px + e cos(qx)[0] = 0. Therefore y1 = epx sin(qx) is a solution of (1). Similarly, we can show that y2 = epx cos qx is a solution of (1). We leave this as an exercise.
176
CHAPTER 4. APPLICATIONS OF DIFFERENTIATION
Remark 16 Use Integral Tables or computer algebra in evaluating the indefinite integrals as needed. Example 4.4.3 Solve the differential equations for y(t). (i) y 00 − 5y 0 + 14y = 0 (ii) y 00 − 6y 0 + 9y = 0 (iii) y 00 − 4y 0 + 5y = 0 We let y = emt . We then solve for m and determine the solution. We observe that y 0 = memt , y 00 = m2 emt . Part (i) By substituting y = emt in the equation we get m2 emt − 5memt + 14emt = emt (m2 − 5m + 14) = 0 → m2 − 5m + 14 = 0 = (m − 7)(m + 2) → m = 7, −2. Therefore, y(t) = Ae−2t + Be7t .
Part (ii) Again, by substituting y = emt , we get m2 emt − 6memt + 9emt = 0 m2 − 6m + 9 = (m − 3)2 = 0 m = 3, 3. The solution is y(t) = Ae3t + Bte3t .
Part (iii) By substituting y = emt , we get m2 emt − 4memt + 5emt = emt (m2 − 4m + 5) = 0 → m2 − 4m + 5 = 0 √ 4 ± 16 − 20 = 2 ± 1i. m= 2 The general solution is y(t) = e2t (A cos t + B sin t).
4.4. LINEAR SECOND ORDER HOMOGENEOUS DIFFERENTIAL EQUATIONS177 Example 4.4.4 Solve the differential equation for y(t) where y(t) satisfies the conditions y 00 (t) − 2y 0 (t) − 15y(t) = 0; y(0) = 1, y 0 (0) = −1. We assume that y(t) = emt . By substitution we get the characteristic equation: m2 − 2m − 15 = 0, m = 5, −3. The general solution is y(t) = Ae−3t + Be5t . We now impose the additional conditions y(0) = 1, y 0 (0) = −1. y(t) = Ae−3t + Be5t y 0 (t) = −3Ae−3t + 5Be5t y(0) = A + B = 1 y 0 (0) = −3A + 5B = −1 On solving these two equations simultaneously, we get 3 1 A= , B= . 4 4 Then the exact solution is y(t) =
3 −3t 1 5t e + e . 4 4
Exercises 4.4 Solve for y(t) from each of the following: 1. y 00 − y 0 − 20y = 0 2. y 00 − 8y 0 + 16y = 0 3. y 00 + 9y 0 + 20y = 0 4. y 00 + 4y 0 + 4 = 0 5. y 00 − 8y 0 + 12y = 0 6. y 00 − 6y 0 + 10y = 0
178
CHAPTER 4. APPLICATIONS OF DIFFERENTIATION
7. y 0 − y 0 − 6y = 0, y(0) = 10, y 0 (0) = 15 8. y 00 − 4y 0 + 4y − 0, y(0) = 4, y 0 (0) = 8 9. y 00 + 8y 0 + 12y = 0, y(0) = 1, y 0 (0) = 3 10. y 00 + 6y 0 + 10y = 0, y(0) = 5, y 0 (0) = 7 11. y 00 − 4y = 0, y(0) = 1, y 0 (0) = −1 12. y 00 − 9y = 0, y(0) = −1, y 0 (0) = 1 13. y 00 + 9y = 0, y(0) = 2, y 0 (0) = 3 14. y 00 + 4y = 0, y(0) = −1, y 0 (0) = 2 15. y 00 − 3y 0 + 2y = 0, y(0) = 2, y 0 (0) = −2 16. y 00 − y 0 − 6y = 0, y(0) = 6, y 0 (0) = 5 17. y 00 + 4y 0 + 4y = 0, y(0) = 1, y 0 (0) = 4 18. y 00 − 6y 0 + 9y = 0, y(0) = 1, y 0 (0) = −1 19. y 00 + 6y 0 + 13y = 0, y(0) = 1, y 0 (0) = 2 20. y 00 − 3y 0 + 2y = 0 21. y 00 + 3y 0 + 2y = 0 22. y 00 + m2 y = 0 23. y 00 − m2 y = 0 24. y 00 + 2my 0 + m2 y 2 = 0 25. y 00 + 2my 0 + (m2 + 1)y = 0 26. y 00 − 2my 0 + (m2 + 1)y = 0 27. y 00 + 2my 0 + (m2 − 1)y = 0 28. y 00 − 2my 0 + (m2 − 1)y = 0 29. 9y 00 − 12y 0 + 4y = 0 30. 4y 00 + 4y 0 + y = 0
4.5. LINEAR NON-HOMOGENEOUS SECOND ORDER DIFFERENTIAL EQUATIONS179
4.5
Linear Non-Homogeneous Second Order Differential Equations
Theorem 4.5.1 (Variation of Parameters) Consider the equations y 00 + p(x)y 0 + q(x)y = r(x) y 00 + p(x)y 0 + q(x)y = 0.
(1) (2)
Suppose that y1 and y2 are any two linearly independent solutions of (2). Then the general solution of (1) is Z Z y1 (x)r(x) y2 (x)r(x) y(x) = c1 y1 (x) + c2 y2 (x) + y2 (x) dx − y1 (x) dx . W (y1 , y2 ) W (y1 , y2 ) Proof. It is already shown that c1 y1 (x) + c2 y2 (x) is the most general solution of the homogeneous equation (2), where c1 and c2 are arbitrary constants. We observe that the difference of any two solutions of (1) is a solution of (2). Suppose that y ∗ (x) is any solution of (1). We wish to find two functions, u1 and u2 , such that y ∗ (x) = u1 (x)y1 (x) + u2 (x)y2 (x).
(3)
By differentiation of (3), we get y ∗0 (x) = (u01 y1 + u02 y2 ) + (u1 y10 + u2 y20 ).
(4)
We impose the following condition (5) on u1 and u2 : u01 y1 + u02 y2 = 0. Then y ∗0 (x) = u1 y10 + u2 y20 y ∗00 (x) = (u1 y100 + u2 y200 ) + u01 y10 + u02 y20 . Since y ∗ (x) is a solution of (1), we get r(x) = y ∗00 + p(x)y ∗0 + q(x)y ∗ = (u1 y100 + u2 y200 ) + (u01 y10 + u02 y20 ) + p(x)[u1 y10 + u2 y20 ] + q(x)(u1 y1 + u2 y2 ) = u1 [y100 + p(x)y10 + q(x)y1 ] + u2 [y200 + p(x)y20 + q(x)y2 ] + (u01 y1 + u02 y20 ) = u01 y10 + u02 y20 .
(5)
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CHAPTER 4. APPLICATIONS OF DIFFERENTIATION
Hence, another condition on u1 and u2 is u01 y10 + u02 y20 = r(x).
(6)
By solving equations (5) and (6) simultaneously for u01 and u02 , we get u01 =
â&#x2C6;&#x2019;y2 r(x) y1 y20 â&#x2C6;&#x2019; y2 y10
and u02 (x) =
y1 r(x) . y1 y20 â&#x2C6;&#x2019; y2 y10
(7)
The denominator of the solution (7) is the Wronskian of y1 and y2 , which is not zero for any x since y1 and y2 are linearly independent by assumption. By taking the indefinite integrals in equation (7), we obtain u1 and u2 . Z Z y1 (x)r(x) y2 (x)r(x) dx and u2 (x) = dx. u1 (x) = â&#x2C6;&#x2019; W (y1 , y2 ) W (y1 , y2 ) By substituting these values in (3), we get a particular solution y â&#x2C6;&#x2014; (x) = y2 u2 + y1 u1 Z Z y2 (x)r(x) y1 (x)r(x) dx â&#x2C6;&#x2019; y1 (x) dx. = y2 (x) W (y1 , y2 ) W (y1 , y2 ) This solution y â&#x2C6;&#x2014; (x) is called a particular solution of (1). To get the general solution of (1), we add the general solution c1 y1 (x) + c2 y2 (x) of (2) to the particular solution of y â&#x2C6;&#x2014; (x) and get Z Z y2 (x)r(x) y1 (x)r(x) y(x) = (c1 y1 (x) + c2 y2 (x)) + y2 (x) dx â&#x2C6;&#x2019; y1 (x) dx . W (y1 , y2 ) W (y1 , y2 ) This completes the proof of this theorem. Remark 17 The general solution of (2) is called the complementary solution of (1) and is denoted yc (x). yc (x) = c1 y1 (x) + c2 y2 (x). The particular solution y â&#x2C6;&#x2014; of (1) is generally written as yp . Z Z r(x)y2 (x) r(x)y1 (x) dx â&#x2C6;&#x2019; y1 dx. yp = y2 W (y1 , y2 ) W (y1 , y2 ) The general solution y(x) of (1) is the sum of yc and yp , y = yc (x) + yp (x).
4.5. LINEAR NON-HOMOGENEOUS SECOND ORDER DIFFERENTIAL EQUATIONS181 Example 4.5.1 Solve the differential equation y 00 + 8y 0 + 12y = e−3x . We find the general solution of the homogeneous equation y 00 + 8y 0 + 12y = 0. We let y = emx be a solution. Then y 0 = memx , y 00 = m2 emx and m2 emx + 8memx + 12emx = 0 m2 + 8m + 12 = 0 m = −6, −2. So, yc (x) = Ae−6x + Be−2x is the complementary solution. We compute the Wronskian W (e−6x , e−2x ) = e−6x (−2)e−2x − e−2x (−6)e−6x = e−8x (−2 + 6) = 4e−8x 6= 0. By Theorem 4.4.1, the particular solution is given by Z −6x −3x Z −2x −3x e ·e e ·e −2x −6x yp = e dx − e dx −8x −8x 4e 4e Z Z 1 −x 1 3x = e−2x e dx − e−6x e dx 4 4 1 −x 1 3x −2x −6x e −e e = −e 4 4 1 1 −3x = − e−3x − e 4 12 1 = − e−3x . 3 The complete solution is the sum of the complementary solution yc and the particular solution yp . y(t) = Ae−6x + Be−2x −
1 −3x e . 3
182
CHAPTER 4. APPLICATIONS OF DIFFERENTIATION
Exercises 4.5 Find the complementary, particular and the complete solution for each of the following. Use tables of integrals or computer algebra to do the integrations, if necessary. 1. y 00 + 4y = sin(3x)
2. y 00 − 9y = e2x
3. y 00 + 9y = cos 2x
4. y 00 − 4y = e−x
5. y 00 − y = xex
6. y 00 − 5y 0 + 6y = 3e4x
7. y 00 − 4y 0 + 4y = e−x
8. y 00 + 5y 0 + 4y = 2ex
9. my 00 − py 0 = mg
10. y 00 + 5y 0 + 6y = x2 e2x
In exercises 11–20, compute the complete solution for y. 11. y 00 + y = 4x, y(0) = 2, y 0 (0) = 1 12. y 00 − 9y = ex , y(0) = 1, y 0 (0) = 5 13. y 00 − 2y 0 − 3y = 4, y(0) = 2, y 0 (0) = −1 14. y 00 − 3y 0 + 2y = 4x 15. y 00 + 4y = sin 2x 16. y 00 − 4y = e2x 17. y 00 − 4y = e−2x 18. y 00 + 4y = cos 2x 19. y 00 + 9y = 2 sin 3x + 4 cos 3x 20. y 00 + 4y 0 + 5y = sin x − 2 cos x
Chapter 5 The Definite Integral 5.1
Area Approximation
In Chapter 4, we have seen the role played by the indefinite integral in finding antiderivatives and in solving first order and second order differential equations. The definite integral is very closely related to the indefinite integral. We begin the discussion with finding areas under the graphs of positive functions. Example 5.1.1 Find the area bounded by the graph of the function y = 4, y = 0, x = 0, x = 3.
graph
From geometry, we know that the area is the height 4 times the width 3 of the rectangle. Area = 12.
Example 5.1.2 Find the area bounded by the graphs of y = 4x, y = 0, x = 0, x = 3. 183
184
CHAPTER 5. THE DEFINITE INTEGRAL
graph
1 From geometry, the area of the triangle is times the base, 3, times the 2 height, 12. Area = 18. Example 5.1.3 Find the area bounded by the graphs of y = 2x, y = 0, x = 1, x = 4.
graph
1 The required area is covered by a trapezoid. The area of a trapezoid is 2 times the sum of the parallel sides times the distance between the parallel sides. 1 Area = (2 + 8)(3) = 15. 2 Example 5.1.4 Find the area bounded by the curves y = 0, x = −2, x = 2.
√ 4 − x2 , y =
graph
By inspection, we recognize that this is the area bounded by the upper half of the circle with center at (0, 0) and radius 2. Its equation is √ x2 + y 2 = 4 or y = 4 − x2 , −2 ≤ x ≤ 2. Again from geometry, we know that the area of a circle with radius 2 is πr2 = 4π. The upper half of the circle will have one half of the total area. Therefore, the required area is 2π.
5.1. AREA APPROXIMATION
185
Example 5.1.5 Approximate the area bounded by y = x2 , y = 0, x = 0, and x = 3. Given that the exact area is 9, compute the error of your approximation. Method 1. We divide the interval [0, 3] into six equal subdivisions at the 3 5 1 points 0, , 1, , and 2. Such a subdivision is called a partition of [0, 3]. 2 2 2 We draw vertical segments joining these points of division to the curve. On each subinterval [x1 , x2 ], the minimum value of the function x2 is at x21 . The maximum value x22 of the function is at the right hand end point x2 . Therefore,
graph
The lower approximation, denoted L, is given by 2 2 1 3 1 5 1 2 1 2 1 L=0 · +1 · + · + (2) · + · 2 2 2 2 2 2 2 1 9 25 = · 0+1+ +4+ 2 4 4 27 = ≈ 8 · 75. 4 2
This approximation is called the left-hand approximation of the area. The error of approximation is −0.25. The Upper approximation, denoted U , is given by 2 2 2 1 3 1 5 1 1 1 2 1 2 1 · +1 · + · + (2) · + · + (3)2 · U= 2 2 2 2 2 2 2 2 2 1 1 9 25 +1+ +4+ +9 = 2 4 4 4 1 91 = 2 4 91 = ≈ 11 · 38. 8
186
CHAPTER 5. THE DEFINITE INTEGRAL
The error of approximation is +2.28. This approximation is called the right-hand approximation. Method 2. (Trapezoidal Rule) In this method, for each subinterval [x1 , x2 ], we join the point (x1 , x21 ) with the point (x2 , x22 ) by a straight line and find 1 the area under this line to be a trapezoid with area (x2 − x1 )(x21 + x22 ). We 2 add up these areas as the Trapezoidal Rule approximation, T , that is given by 2 ! 2 ! 1 1 1 1 1 02 + 12 + −0 + 1− 2 2 2 2 2 ! 2 ! 2 1 3 1 3 3 3 22 + + −1 + 12 + 2− 2 2 2 2 2 2 ! 2 ! 2 1 5 1 5 5 5 32 + + −2 + 22 + 3− 2 2 2 2 2 2 # " 2 2 2 1 2 1 3 5 = 0 +2· + 2(12 ) + 2 · + 2(2)2 + 2 · + 32 4 2 2 2 9 25 1 = 1+2+ +8+ +9 4 2 2 37 = = 9 · 25. 4
1 T = 2
The error of this Trapezoidal approximation is +0.25. Method 3. (Simpson’s Rule) In this case we take two intervals, say [x1 , x2 ]∪ [x2 , x3 ], and approximate the area over this interval by 1 [f (x1 ) + 4f (x2 ) + f (x3 )] · (x3 − x1 ) 6 1 and then add them up. In our case, let x0 = 0, x1 = , x2 = 1, x3 = 2 3 5 , x4 = 2, x5 = and x6 = 3. Then the Simpson’s rule approximation, S, 2 2
5.1. AREA APPROXIMATION
187
is given by # # " " 2 2 1 1 2 1 3 S= 0 +4· + (1)2 · (1) + (1)2 + 4 · + 22 (1) 6 2 6 2 # " 2 1 2 5 + 2 +4· + 32 · (1) 6 2 # " 2 2 2 1 2 1 3 5 = 0 +4 + 2 · 12 + 4 · + 2 · 22 + 4 · + 32 6 2 2 2 =
54 = 9 = Exact Value! 6
For positive functions, y = f (x), defined over a closed and bounded interval [a, b], we define the following methods for approximating the area A, bounded by the curves y = f (x), y = 0, x = a and x = b. We begin with a common equally-spaced partition, P = {a = x0 < x1 < x2 < x3 < . . . < xn = b}, such that xi = a +
b−a i, for i = 0, 1, 2, . . . , n. n
Definition 5.1.1 (Left-hand Rule) The left-hand rule approximation for A, denoted L, is defined by L=
b−a · [f (x0 ) + f (x1 ) + f (x2 ) + · · · + f (xn−1 )]. n
Definition 5.1.2 (Right-hand Rule) The right-hand rule approximation for A, denoted R, is defined by R=
b−a · [f (x1 ) + f (x2 ) + f (x3 ) + · · · + f (xn )]. n
Definition 5.1.3 (Mid-point Rule) The mid-point rule approximation for A, denoted M , is defined by b−a x0 + x1 x1 + x2 xn−1 + xn M= f +f + ··· + f . n 2 2 2
188
CHAPTER 5. THE DEFINITE INTEGRAL
Definition 5.1.4 (Trapezoidal Rule) The trapezoidal rule approximation for A, denoted T , is defined by bâ&#x2C6;&#x2019;a 1 1 1 T = (f (x0 ) + f (x1 )) + (f (x1 ) + f (x2 )) + ¡ ¡ ¡ + (f (xnâ&#x2C6;&#x2019;1 ) + f (xn )) n 2 2 2 bâ&#x2C6;&#x2019;a 1 1 = f (x0 ) + f (x1 ) + f (x2 ) + ¡ ¡ ¡ + f (xnâ&#x2C6;&#x2019;1 ) + f (xn ) . n 2 2 Definition 5.1.5 (Simpsonâ&#x20AC;&#x2122;s Rule) The Simpsonâ&#x20AC;&#x2122;s rule approximation for A, denoted S, is defined by x0 + x1 bâ&#x2C6;&#x2019;a 1 f (x0 ) + 4 f + f (x1 ) S= n 6 2 1 x1 + x2 + f (x1 ) + 4 f + f (x2 ) 6 2 1 xnâ&#x2C6;&#x2019;1 + xn + ¡¡¡ + f (xnâ&#x2C6;&#x2019;1 + 4 f + f (xn ) 6 2 bâ&#x2C6;&#x2019;a 1 x0 + x1 x1 + x2 = ¡ ¡ f (x0 ) + 4 f + 2 f (x1 ) + 4 f n 6 2 2 xnâ&#x2C6;&#x2019;1 + xn + ¡ ¡ ¡ 2 f (xnâ&#x2C6;&#x2019;1 ) + 4 f + f (xn ) . 2 Examples Exercises 5.1 1. The sum of n terms a1 , a2 , ¡ ¡ ¡ , an is written in compact form in the so called sigma notation n X
ak = a1 + a2 + ¡ ¡ ¡ + an .
k=1
The variable k is called the index, the number 1 is called the lower limit n X and the number n is called the upper limit. The symbol ak is read k=1
â&#x20AC;&#x153;the sum of ak from k = 1 to k = n.â&#x20AC;? Verify the following sums for n = 5:
5.1. AREA APPROXIMATION n X
k=
(b)
n X
k2 =
(d)
n X
2r = 2n+1 = 1
(a)
k=1
189
n(n + 1) 2
n(n + 1)(2n + 1) 6 k=1 2 n X n(n + 1) 3 (c) k = 2 k=1
k=1
2. Prove the following statements by using mathematical induction: n X
k=
(b)
n X
k2 =
(d)
n X
2r = 2n+1 − 1
(a)
k=1
n(n + 1) 2
n(n + 1)(2n + 1) 6 k=1 2 n X n(n + 1) 3 (c) k = 2 k=1
k=1
3. Prove the following statements: n n X X (a) (c ak ) = c ak k=1
(b)
k=1
n X
n X
ak +
n X
n X
ak −
(ak + bk ) =
k=1
(c)
(ak − bk ) =
k=1
(d)
n X
k=1
bk
n X
bk
k=1
k=1
(a ak + b bk ) = a
k=1
n X
k=1
n X k=1
ak + b
n X k=1
bk
190
CHAPTER 5. THE DEFINITE INTEGRAL
4. Evaluate the following sums: (a)
6 X (2i) i=0
(b)
5 X 1 j=1
j
4 X (c) (1 + (−1)k )2 k=0
(d)
5 X
(3m − 2)
m=2
5. Let P = {a = x0 < x1 < x2 < · · · < xn = b} be a partition of [a, b] b−a k, k = 0, 1, 2, · · · , n. Let f (x) = x2 . Let A such that xk = a + n denote the area bounded by y = f (x), y = 0, x = 0 and x = 2. Show that n−1 2 X 2 (a) Left-hand Rule approximation of A is x . n k=1 k−1 n−1 2 X 2 x . n k=1 k 2 n 2 X xk−1 + xk . (c) Mid-point Rule approximation of A is n k=1 2 ( ) n−1 X 2 (d) Trapezoidal Rule approximation of A is 2+ x2k . n k=1
(b) Right-hand Rule approximation of A is
(e) Simpson’s Rule approximation of A 1 3n
(
4+4
2 n X xk−1 + xk k=1
2
+2
n−1 X k=1
x2k
)
.
5.1. AREA APPROXIMATION
191
In problems 6–20, use the function f , numbers a, b and n, and compute the approximations LH, RH, M P, T, S for the area bounded by y = f (x), y = 0, x = a, x = b using the partition b−a , and P = {a = x0 < x1 < · · · < xn = b}, where xk = a + k n n
(a) LH =
b−aX f (xk−1 ) n k=1 n
b−aX f (xk ) n k=1 n b−aX xn−1 + xk (c) M P = f n k=1 2 ( n−1 ) b−a X 1 (d) T = f (xk ) + (f (x0 ) + f (xn )) n 2 k=1 ( ) n−1 n X X b−a xk−1 + xk (e) S = (f (x0 ) + f (xn )) + 2 f (xn ) + 4 f 6n 2 k=1 k=1
(b) RH =
1 = {LH + 4M P + RH} 6 6. f (x) = 2x, a = 0, b = 2, n = 6 7. f (x) =
1 , a = 1, b = 3, n = 6 x
8. f (x) = x2 , a = 0, b = 3, n = 6 9. f (x) = x3 , a = 0, b = 2, n = 4 10. f (x) =
1 , a = 0, b = 3, n = 6 1+x
11. f (x) =
1 , a = 0, b = 1, n = 4 1 + x2
1 12. f (x) = √ , a = 0, b = 1, n = 4 4 − x2
192
CHAPTER 5. THE DEFINITE INTEGRAL 1 , a = 0, b = 1, n = 4 4 − x2 1 f (x) = , a = 0, b = 2, n = 4 4 + x2 1 f (x) = √ , a = 0, b = 2, n = 4 4 + x2 √ f (x) = 4 + x2 , a = 0, b = 2, n = 4 √ f (x) = 4 − x2 , a = 0, b = 2, n = 4
13. f (x) = 14. 15. 16. 17.
18. f (x) = sin x, a = 0, b = π, n = 4 π π 19. f (x) = cos x, a = − , b = , n = 4 2 2 20. f (x) = sin2 x, a = 0, b = π, n = 4
5.2
The Definite Integral
Let f be a function that is continuous on a bounded and closed interval [a, b]. Let p = {a = x0 < x1 < x2 < . . . < xn = b} be a partition of [a, b], not necessarily equally spaced. Let mi = min{f (x) : xi−1 ≤ x ≤ xi }, i = 1, 2, . . . , n; Mi = max{f (x) : xi−1 ≤ x ≤ xi }, i = 1, 2, . . . , n; ∆xi = xi − xi−1 , i = 1, 2, . . . , n; ∆ = max{∆xi : i = 1, 2, . . . , n}; L(p) = m1 ∆x1 + m2 ∆x2 + . . . + mn ∆xn U (p) = M1 ∆xi + M2 ∆x2 + . . . + Mn ∆xn . We call L(p) the lower Riemann sum. We call U (p) the upper Riemann sum. Clearly L(p) ≤ U (p), for every partition. Let Lf = lub{L(p) : p is a partition of [a, b]} Uf = glb{U (p) : p is a partition of [a, b]}.
5.2. THE DEFINITE INTEGRAL
193
Definition 5.2.1 If f is continuous on [a, b] and Lf = Uf = I, then we say that: (i) f is integrable on [a, b]; (ii) the definite integral of f (x) from x = a to x = b is I; (iii) I is expressed, in symbols, by the equation I=
b
Z
f (x)dx; a
R (iv) the symbol“ ” is called the “integral sign”; the number “a” is called the “lower limit”; the number “b” is called the “upper limit”; the function “f (x)” is called the “integrand”; and the variable “x” is called the (dummy) “variable of integration.” (v) If f (x) ≥ 0 for each x in [a, b], then the area, A, bounded by the curves y = f (x), y = 0, x = a and x = b, is defined to be the definite integral of f (x) from x = a to x = b. That is, A=
b
Z
f (x)dx. a
(vi) For convenience, we define a
Z
f (x)dx = 0, a
a
Z
f (x)dx = − b
b
Z
f (x)dx. a
Theorem 5.2.1 If a function f is continuous on a closed and bounded interval [a, b], then f is integrable on [a, b]. Proof. See the proof of Theorem 5.6.3. Theorem 5.2.2 (Linearity) Suppose that f and g are continuous on [a, b] and c1 and c2 are two arbitrary constants. Then
194 (i)
CHAPTER 5. THE DEFINITE INTEGRAL b
Z
(f (x) + g(x))dx = a
(ii)
(f (x) − g(x))dx =
(iii)
g(x)dx
f (x)dx −
c1 f (x)dx = c1
f (x)dx,
Z
a
a b
(c1 f (x) + c2 g(x))dx = c1
g(x)dx a
b
Z
b
Z
a b
Z
b a
b
Z
a
Z
f (x)dx +
Z
a b
Z
b
Z
b
c2 g(x)dx = c2 f (x)dx + c2
b
Z
g(x)dx a
a
a
g(x)dx and a
a b
Z
b
Z
Proof. Part (i) Since f and g are continuous, f + g is continuous and hence by Theorem 5.2.1 each of the following integrals exist: Z b Z b Z b f (x)dx, g(x)dx, and (f (x) + g(x))dx. a
a
a
Let P = {a = x0 < x1 < x2 < · · · < xn−1 < xn = b}. For each i, there exist number c1 , c2 , c3 , d1 , d2 , and d3 on [xi−1 , xi ] such that f (c1 ) = absolute minimum of f on [xi−1 , xi ], g(c2 ) = absolute minimum of f on [xi−1 , xi ], f (c3 ) + g(c3 ) = absolute minimum of f + g on [xi−1 , xi ], f (d1 ) = absolute maximum of f on [xi−1 , xi ], g(d2 ) = absolute maximum of g on [xi−1 , xi ], f (d3 ) + g(d3 ) = absolute maximum of f + g on [xi−1 , xi ]. It follows that f (c1 ) + g(c2 ) ≤ f (c3 ) + g(c3 ) ≤ f (d3 ) + g(d3 ) ≤ f (d1 ) + g(d2 ) Consequently, Lf + Lg ≤ L(f +g) ≤ U(f +g) ≤ Uf + Ug Since f and g are integrable, Z b Lf = Uf = f (x)dx;
Lg = Ug =
a
(Why?)
b
Z
g(x)dx. a
By the squeeze principle, L(f +g) = U(f +g) =
b
Z
(f (x) + g(x))dx a
5.2. THE DEFINITE INTEGRAL
195
and b
Z
[f (x) + g(x)]dx = a
b
Z
f (x)dx +
b
Z
a
g(x)dx. a
This completes the proof of Part (i) of this theorem. Part (iii) Let k be a positive constant and let F be a function that is continuous on [a, b]. Let P = {a = x0 < x1 < x2 < · · · < xn−1 < xn = b} be any partition of [a, b]. Then for each i there exist numbers ci and di such that F (ci ) is the absolute minimum of F on [xi−1 , xi ] and F (di ) is absolute maximum of F on [xi−1 , xi ]. Since k is a positive constant, kF (ci ) = absolute minimum of kF on [xi−1 , xi ], kF (di ) = absolute maximum of kF on [xi−1 , xi ], −kF (di ) = absolute minimum of (−k)F on [xi−1 , xi ], −kF (ci ) = absolute maximum of (−k)F on [xi−1 , xi ]. Then L(P ) = F (c1 )∆x1 + F (c2 )∆x2 + · · · + F (cn )∆xn , U (P ) = F (d1 )∆x1 + F (d2 )∆x2 + · · · + F (dn )∆xn , kL(P ) = (kF )(c1 )∆x1 + (kF )(c2 )∆x2 + · · · + (kF )(cn )∆xn , kU (P ) = (kF )(d1 )∆x1 + (kF )(d2 )∆x2 + · · · + (kF )(dn )∆xn , −kU (P ) = (−kF )(d1 )∆x1 + (−kF )(d2 )∆x2 + · · · + (−kF )(dn )∆xn , −kL(P ) = (−kF )(c1 )∆x1 + (−kF )(c2 )∆x2 + · · · + (−kF )(cn )∆xn . Since F is continuous, kF and (−k)F are both continuous and Lf = Up =
b
Z
F (x)dx, a
L(kF ) = U(kF ) = k(LF ) = k(UF ) = k
b
Z
F (x)dx a
L(−kF ) = (−k)UF , U(−kF ) = −kLF , and hence L(−kF ) = U(−kF ) = (−k)
b
Z
F (x)dx. a
196
CHAPTER 5. THE DEFINITE INTEGRAL
Therefore, Z b Z b Z b (c1 f (x) + c2 g(x)) = c1 f (x)dx + c2 g(x)dx a a a Z b Z b g(x)dx f (x)dx + c2 = c1
(Part (i)) (Why?)
a
a
This completes the proof of Part (iii) of this theorem. Part (ii) is a special case of Part (iii) where c1 = 1 and c2 = −1. This completes the proof of the theorem. Theorem 5.2.3 (Additivity) If f is continuous on [a, b] and a < c < b, then Z b Z c Z b f (x)dx = f (x)dx + f (x)dx. a
a
c
Proof. Suppose that f is continuous on [a, b] and a < c < b. Then f is continuous on [a, c] and on [c, b] and, hence, f is integrable on [a, b], [a, c] and [c, b]. Let P = {a = x0 < x1 < x2 < · · · xn = b}. Suppose that xi−1 ≤ c ≤ xi for some i. Let P1 = {a = x0 < x1 < x2 < · · · < xi−1 ≤ c} and P2 = {c ≤ xi < xi+1 < · · · < xn = b}. Then there exist numbers c1 , c2 , c3 , d1 , d2 , and d3 such that f (c1 ) = absolute minimum of f on [xi−1 , c], f (d1 ) = absolute maximum of f on [xi−1 , c], f (c2 ) = absolute minimum of f on [c, xi ], f (d2 ) = absolute maximum of f on [c, xi ], f (c3 ) = absolute minimum of f on [xi−1 , xi ], f (d3 ) = absolute maximum of f on [xi−1 , xi ], Also, f (c3 ) ≤ f (c1 ), f (c3 ) ≤ f (c2 ), f (d1 ) ≤ f (d3 ) and f (d2 ) ≤ f (d3 ). It follows that L(P ) ≤ L(P1 ) + L(P2 ) ≤ U (P1 ) + U (P2 ) ≤ U (P ). It follows that
b
Z
f (x) = a
c
Z
f (x)dx + a
This completes the proof of the theorem.
b
Z
f (x)dx. c
5.2. THE DEFINITE INTEGRAL
197
Theorem 5.2.4 (Order Property) If f and g are continuous on [a, b] and f (x) ≤ g(x) for all x in [a, b], then b
Z
f (x)dx ≤
b
Z
a
g(x)dx. a
Proof. Suppose that f and g are continuous on [a, b] and f (x) ≤ g(x) for all x in [a, b]. Let P = {a = x0 < x1 < x2 < · · · < xn = b} be a partition of [a, b]. For each i there exists numbers ci , c∗i , di and d∗i such that f (ci ) = absolute minimum of f on [xi−1 , xi ], f (di ) = absolute maximum of f on [xi−1 , xi ], g(c∗i ) = absolute minimum of g on [xi−1 , xi ], g(d∗i ) = absolute maximum of g on [xi−1 , xi ]. By the assumption that f (x) ≤ g(x) on [a, b], we get f (ci ) ≤ g(c∗i ) and f (di ) ≤ g(d∗i ). Hence Lf ≤ Lg It follows that
and Uf ≤ Ug .
b
Z
f (x)dx ≤ a
b
Z
g(x)dx. a
This completes the proof of this theorem. Theorem 5.2.5 (Mean Value Theorem for Integrals) If f is continuous on [a, b], then there exists some point c in [a, b] such that b
Z
f (x)dx = f (c)(b − a). a
Proof. Suppose that f is continuous on [a, b], and a < b. Let m = absolute minimum of f on [a, b], and M = absolute maximum of f on [a, b]. Then, by Theorem 5.2.4, m(b − a) ≤
b
Z
m dx ≤ a
b
Z
f (x)dx ≤ a
b
Z
M dx = M (b − a) a
198
CHAPTER 5. THE DEFINITE INTEGRAL
and 1 m≤ b−a
b
Z
f (x)dx ≤ M. a
By the intermediate value theorem for continuous functions, there exists some c such that 1 f (c) = b−a
b
Z
f (x)dx a
and b
Z
f (x)dx = f (c)(b − a). a
For a = b, take c = a. This completes the proof of this theorem. Definition 5.2.2 The number f (c) given in Theorem 5.2.6 is called the average value of f on [a, b], denoted fav [a, b]. That is 1 fav [a, b] = b−a
b
Z
f (x)dx. a
Theorem 5.2.6 (Fundamental Theorem of Calculus, First Form) Suppose that f is continuous on some closed and bounded interval [a, b] and g(x) =
x
Z
f (t)dt a
for each x in [a, b]. Then g(x) is continuous on [a, b], differentiable on (a, b) and for all x in (a, b), g 0 (x) = f (x). That is d dx
x
Z a
f (t)dt = f (x).
5.2. THE DEFINITE INTEGRAL
199
Proof. Suppose that f is continuous on [a, b] and a < x < b. Then g 0 (x) = lim
h→0
= lim
h→0
= lim
h→0
= lim
h→0
= lim
h→0
= lim
h→0
1 [g(x + h) − g(x)] h Z x+h Z x 1 f (t)dt − f (t)dt h a a Z x Z x+h Z x 1 f (t)dt + f (t)dt − f (t)dt h a x a Z x+h 1 f (t)dt h x 1 [f (c)(x + h − x)] by Theorem 5.2.5) h f (c)
(Why?)
for some c between x and x + h. Since f is continuous on [a, b] and c is between x and x + h, it follows that g 0 (x) = lim f (c) = f (x) h→0
for all x such that a < x < b. At the end points a and b, a similar argument can be used for one sided derivatives, namely, g(x + h) − g(x) h→0 h g(x + h) − g(x) g 0 (b− ) = lim− . h→0 h
g 0 (a+ ) = lim+
We leave the end points as an exercise. This completes the proof of this theorem. Theorem 5.2.7 (Fundamental Theorem of Calculus, Second Form) If f and g are continuous on a closed and bounded interval [a, b] and g 0 (x) = f (x) on [a, b], then Z b f (x)dx = g(b) − g(a). a
We use the notation: [g(x)]ba = g(b) − g(a).
200
CHAPTER 5. THE DEFINITE INTEGRAL
Proof. Let f and g be continuous on the closed and bounded interval [a, b] and for each x in [a, b], let Z x G(x) = f (t)dt. a
Then, by Theorem 5.2.6, G0 (x) = f (x) on [a, b]. Since G0 (x) = g(x) for all x on [a, b], there exists some constant C such that G(x) = g(x) + C for all x on [a, b]. Since G(a) = 0, we get C = −g(a). Then Z b f (x)dx = G(b) a
= g(b) + C = g(b) − g(a). This completes the proof of Theorem 5.2.7. Theorem 5.2.8 (Leibniz Rule) If α(x) and β(x) are differentiable for all x and f is continuous for all x, then "Z # β(x) d f (t)dt = f (β(x)) · β 0 (x) − f (α(x)) · α0 (x). dx α(x) Proof. Suppose that f is continuous for all x and α(x) and β(x) are differentiable for all x. Then "Z # "Z # Z β(x) β(x) 0 d d f (t)dt = f (t)dt + f (t)dt dx α(x) dx α(x) 0 "Z # Z α(x) β(x) d = f (t)dt − f (t)dt dx 0 0 ! ! Z β(x) Z α(x) d d(β(x)) d d(α(x)) = f (t)dt · − f (x)dt d(β(x)) dx d(α(x)) dx 0 0 = f (β(x)) β 0 (x) − f (α(x))α0 (x) (by Theorem 5.2.6) This completes the proof of Theorem 5.2.8.
5.2. THE DEFINITE INTEGRAL
201
Example 5.2.1 Compute each of the following definite integrals and sketch the area represented by each integral: 4
Z
(i)
2
x dx
(ii)
0 π/2
cos x dx
(iv)
tan x dx
Z
(vi)
0
π/2
cot x dx
π/6
Z
(vii)
ex dx 0
π/3
Z
10
Z
−π/2
(v)
sin x dx 0
Z
(iii)
π
Z
π/4
sec x dx
(viii)
Z
−π/4
(xi)
csc x dx
π/4
1
Z
3π/4
sinh x dx
(x)
0
1
Z
cosh x dx 0
We note that each of the functions in the integrand is positive on the respective interval of integration, and hence, represents an area. In order to compute these definite integrals, we use the Fundamental Theorem of Calculus, Theorem 5.2.2. As in Chapter 4, we first determine an anti-derivative g(x) of the integrand f (x) and then use b
Z
f (x)dx = g(b) − g(a) = [g(x)]ba . a
graph
(i)
4
Z
x3 x dx = 3 2
0
4 0
=
64 3
202
CHAPTER 5. THE DEFINITE INTEGRAL graph
(ii)
π
Z
sin x dx = [− cos x]π0 = 1 − (−1) = 2 0
graph
(iii)
π/2
Z
π/2
cos x dx = [sin x]−π/2 = 1 − (−1) = 2
−π/2
graph
(iv)
10
Z
10 0 10 ex dx = [ex ]10 0 = e −e = e −1 0
graph
(v)
Z
π/3
π/3
tan x dx = [ln | sec x|]0
0
graph
π
= ln sec
= ln 2 3
5.2. THE DEFINITE INTEGRAL (vi)
π/2
Z
cot x dx =
π/6
π/2 [ln | sin x|]π/6
203
1 = ln(1) − ln = ln 2 2
graph
(vii)
π/4
Z
−π/4
√ √ π/4 sec x dx = [ln | sec x + tan x|]−π/4 = ln | 2 + 1| − ln | 2 − 1|
graph
(viii)
Z
3π/4
π/4
3π/4
csc x dx = [− ln | csc x + cot x|]π/4
√ √ = − ln | 2 − 1| + ln | 2 + 1|
graph
(ix)
1
Z
sinh x dx = [cosh x]10 = cosh 1 − cosh 0 = cosh 1 − 1 0
graph
204 (x)
CHAPTER 5. THE DEFINITE INTEGRAL 1
Z
cosh x dx = [sinh x]10 = sinh 1 0
graph
Example 5.2.2 Evaluate each of the following integrals:
(i)
10
Z 1
(iii)
1 dx x
(ii)
cos(3x)dx
(iv)
0
(v)
sinh(4x)dx
(vi)
0
(i) Since
1 d (ln |x|) = , dx x Z
d (ii) Since dx
π/2
0
0
π/6
4
Z
cosh(2x)dx
10
1 dx = [ln |x|]10 1 = ln(10) x
−1 cos(2x) = sin(2x), 2 Z
(iii)
(x4 − 3x2 + 2x − 1)dx
0
1
Z
2
Z 0
3
Z
sin(2x)dx
0
π/6
Z
π/2
Z
π/2 −1 1 1 sin 2x dx = cos(2x) = + = 1. 2 2 2 0
π/6 π 1 1 1 sin(3x) = sin = . cos(3x) = 3 3 2 3 0
5.2. THE DEFINITE INTEGRAL
205
2 1 5 3 2 (iv) (x − 3x + 2x − 1)dx = x − x + x − x 5 0 0 32 = −8+4−2 −0 5 2 = . 5 3 Z 3 1 1 1 (v) sinh(4x)dx = cosh(4x) = cosh(12) − cosh(0) 4 4 4 0 0 1 = (cosh(12) − 1) 4 4 Z 4 1 1 (vi) cosh(2x)dx = sinh(2x) = cosh(8) 2 2 0 0 2
Z
4
2
Example 5.2.3 Verify each of the following: (i)
4
Z
2
x dx = 0
(ii)
2
x dx + 0
4
Z
3
Z
2
x dx <
x2 dx 3
4
Z
1
4
Z
x3 dx 1
x
d (iii) dx
Z
d (iv) dx
"Z
(t + 3t + 1)dt = x2 + 3x + 1 2
0
#
x3
cos(t)dt = 3x2 cos(x3 ) − 2x cos(x2 ). x2
(v) If f (x) = sin x, then fav [0, π] =
2 . π
4 64 x3 = (i) x dx = 3 0 3 0 3 3 3 4 Z 3 Z 4 x x 2 2 + x dx + x dx = 3 0 3 3 0 3 Z
4
2
206
CHAPTER 5. THE DEFINITE INTEGRAL
27 64 27 64 = −0 + − = . 3 3 3 3 Therefore, Z 4 Z 3 Z 2 2 x dx = x dx + 1
0
4
x2 dx. 3
4 64 1 x3 = (ii) x dx = − = 21 3 1 3 3 1 4 4 Z 4 1 x 3 = 64 − x dx = 4 1 4 1 Z 4 Z 4 Therefore, x2 dx < x3 dx. We observe that x2 < x3 on (1, 4]. Z
4
2
1
(iii)
x
Z
1
x t3 t2 (t + 3t + 1)dt = +3 +t 3 2 0
2
0
= d dx
x3 3 2 + x +x 3 2
d (iv) dx
"Z
x3
x3 3 2 + x +x 3 2
= x2 + 3x + 1.
#
cos tdt = x2
=
i 3 d h [sin t]xx2 dx d [sin(x3 ) − sin(x2 )] dx
= cos(x3 ) · 3x2 − cos(x2 ) · 2x = 3x2 cos(x3 ) − 2x cos(x2 ). Using the Leibniz Rule, we get ! Z x3 d cos tdt = cos(x3 ) · 3x2 − cos(x2 ) · 2x dx x2 = 3x2 cos x3 − 2x cos x2 .
5.2. THE DEFINITE INTEGRAL
207
(v) The average value of sin x on [0, π] is given by Z π 1 1 sin x dx = [− cos x]π0 π−0 π 0 1 = [−(−1) + 1] π 2 = . π Basic List of Indefinite Integrals: 1.
Z
1 x dx = x4 + c 4
3.
Z
1 dx = ln |x| + c x
5.
Z
−1 sin(ax)dx = cos(ax) + c a
7.
Z
1 cos(ax) dx = sin(ax) + c a
9.
Z
1 tan(ax) dx = ln | sec(ax)| + c a
3
11.
Z
13.
Z
15.
Z
17.
Z
tanh x dx = ln | cosh x| + c
19.
Z
1 sinh(ax) dx = cosh(ax) + c a
1 cot(ax) dx = ln | sin(ax)| + c a e
−x
dx = −e
−x
+c
sinh x dx = cosh x + c
xn+1 + c, n 6= 1 n+1
2.
Z
xn dx =
4.
Z
sin x dx = − cos x + c
6.
Z
cos x dx = sin x + c
8.
Z
tan xdx = ln | sec x| + c
10.
Z
cot x dx = ln | sin x| + c
12.
Z
ex dx = ex + c
14.
Z
eax dx =
16.
Z
cosh x dx = sinh x + c
18.
Z
coth x dx = ln | sinh x| + c
20.
Z
cosh(ax) dx =
1 ax e +c a
1 sinh(ax) + c a
208
CHAPTER 5. THE DEFINITE INTEGRAL
21.
Z
23.
Z
sec x dx = ln | sec x + tan x| + c
25.
Z
sec(ax) dx =
1 tanh(ax) dx = ln | cosh ax| + c a
22.
Z
coth(ax) dx =
24.
Z
csc x dx = − ln | csc x + cot x| + c
1 ln | sinh(ax)| + c a
1 ln | sec(ax) + tan(ax)| + c a
−1 ln | csc(ax) + cot(ax)| + c a Z Z 1 2 27. sec x dx = tan x + c 28. sec2 (ax) dx = tan(ax) + c a Z Z −1 2 29. csc x dx = − cot x + c 30. csc2 (ax) dx = cot(ax) + c a Z Z 2 31. tan x dx = tan x − x + c 32. cot2 x dx = − cot x − x + c 26.
Z
csc(ax) dx =
33.
Z
1 sin x dx = (x − sin x cos x) + c 2
35.
Z
2
sec x tan x dx = sec x + c
34.
Z
cos2 x dx =
36.
Z
csc x dx = − csc x + c
1 (x + sin x cos x) + c 2
Exercises 5.2 Using the preceding list of indefinite integrals, evaluate the following:
1.
5
Z 1
4.
1 dt t
2.
x
e dx 0
sin x dx
3.
0
10
Z
3π/2
Z
5.
Z 0
3π/2
Z
cos x dx
0 π/10
sin(5x) dx
6.
Z 0
π/6
cos(5x) dx
5.2. THE DEFINITE INTEGRAL 7.
Z
π/6
cot(3x) dx
8.
10.
1 −x
e dx
2
sinh(2x) dx
11.
13.
coth(3x) dx
14.
π/8 2
sec (2x) dx
17.
Z
19.
2
cot x dx
20.
22.
π/6
sec(2x)dx
sec x tan x dx
23.
π/6
Z
π/6
Z
15.
csc(2x) dx
π/12
π/6 2
csc (2x)
π/4
Z
18.
tan2 x dx
0
2
sin xdx
π/2
Z
21.
cos2 x dx
−π/2
0
π/4
tanh(2x) dx 0
π
Z
π/6
Z
12.
π/12 π/4
1
Z
π/12
0
Z
cosh(3x) dx
Z
1
16.
e3x dx
0 2
Z
2 0
4
Z
0
Z
9.
Z
−1
π/12
Z
Z
209
π/4
csc x cot x dx
2
Z
24.
π/6
e−3x dx 0
Compute the average value of each given f on the given interval.
25. f (x) = sin x,
27. f (x) = cos x,
−π ,π 2
−π π , 2 2
26. f (x) = x1/3 , [0, 8]
28. f (x) = sin2 x, [0, π] 30. f (x) = e−x , [−2, 2]
29. f (x) = cos2 x, [0, π]
Compute g 0 (x) without computing the integrals explicitly. 31. g(x) =
x
Z
2 2/3
(1 + t )
dt
32. g(x) =
Z
0
33. g(x) =
Z
x2 3 1/3
(1 + t ) x3
dt
34. g(x) =
Z
4x3
arctan(x) dx x2 arcsinh x
(1 + t2 )3/2 dt arcsin x
210
CHAPTER 5. THE DEFINITE INTEGRAL
35. g(x) =
x
Z
1 dt t
1
37. g(x) = Z
39.
Z
36. g(x) =
sin 3x
(1 + t2 )1/2 dt
sin 2x
sin(x3 ) 3 1/3
(1 + t )
dt
38.
sin(x2 )
4x
Z x
x3
arcsin(x) dx
40.
x2
5.3
Z
1 dt 1 + t2
ex
Z
2t dt ln x
Integration by Substitution
Many functions are formed by using compositions. In dealing with a composite function it is useful to change variables of integration. It is convenient to use the following differential notation: If u = g(x), then du = g 0 (x) dx. The symbol “du” represents the “differential of u,” namely, g 0 (x)dx. Theorem 5.3.1 (Change of Variable) If f, g and g 0 are continuous on an open interval containing [a, b], then Z b Z g(b) 0 (i) f (g(x)) · g (x) dx = f (u)du a
(ii)
Z
g(a)
0
f (g(x))g (x) dx =
Z
f (u)du,
where u = g(x) and du = g 0 (x) dx. Proof. Let f, g, and g 0 be continuous on an open interval containing [a, b]. For each x in [a, b], let Z x F (x) = f (g(x))g 0 (x)dx a
and G(x) =
Z
g(x)
f (u)du. g(a)
5.3. INTEGRATION BY SUBSTITUTION
211
Then, by Leibniz Rule, we have F 0 (x) = f (g(x))g 0 (x), and G0 (x) = f (g(x))g 0 (x) for all x on [a, b]. It follows that there exists some constant C such that F (x) = G(x) + C for all x on [a, b]. For x = a we get 0 = F (a) = G(a) + C = 0 + C and, hence, C = 0. Therefore, F (x) = G(x) for all x on [a, b], and hence b
Z
f (g(x))g 0 (x)dx = F (b) a
= G(b) Z g(b) = f (u)du. g(a)
This completes the proof of this theorem. Remark 18 We say that we have changed the variable from x to u through the substitution u = g(x). Example 5.3.1 (i)
Z
2
Z
6
1 1 1 sin udu = [â&#x2C6;&#x2019; cos u]60 = (1 â&#x2C6;&#x2019; cos 6), 3 3 0 0 3 1 where u = 3x, du = 3 dx, dx = du. 3 sin(3x) dx =
212 (ii)
CHAPTER 5. THE DEFINITE INTEGRAL 2
Z
2
3x cos(x ) dx = 0
4
Z
cos u 0
3 du 2
3 [sin u]40 2 3 = sin 4, 2 =
where u = x2 , du = 2x dx, 3x dx =
(iii)
Z
3
Z
3 du. 2
9
1 1 1 du = [eu ]90 = (e9 − 1), 2 2 2 0 0 1 where u = x2 , du = 2x dx, x dx = dx. 2 x2
e x dx =
eu
Definition 5.3.1 Suppose that f and g are continuous on [a, b]. Then the area bounded by the curves y = f (x), y = g(x), y = a and x = b is defined to be A, where Z b A= |f (x) − g(x)| dx. a
If f (x) ≥ g(x) for all x in [a, b], then A=
b
Z
(f (x) − g(x)) dx. a
If g(x) ≥ f (x) for all x in [a, b], then A=
b
Z
(g(x) − f (x)) dx. a
Example 5.3.2 Find the area, A, bounded by the curves y = sin x, y = cos x, x = 0 and x = π.
graph
5.3. INTEGRATION BY SUBSTITUTION
213
h πi hπ i We observe that cos x ≥ sin x on 0, and sin x ≥ cos x on , π . There4 4 fore, the area is given by Z π A= | sin x − cos x| dx 0 Z π/4 Z π = (cos x − sin x) dx + (sin x − cos x)dx 0
π/4 π/4 cos x]0
= [sin x + + [− cos x − sin x]ππ/4 ! " √ √ √ √ # 2 2 2 2 = + −1 + 1+ + 2 2 2 2 √ = 2 2. Example 5.3.3 Find the area, A, bounded by y = x2 , y = x3 , x = 0 and x = 2.
graph
We note that x3 ≤ x2 on [0, 1] and x3 ≥ x2 on [1, 2]. Therefore, by definition, Z 1 Z 2 2 3 A= (x − x ) dx + (x3 − x2 ) dx 0 1 1 2 1 3 1 4 1 4 1 3 = x − x + x − x 3 4 4 3 0 1 1 1 8 1 1 − + 4− − − = 3 4 3 4 3 1 4 1 = + + 12 3 12 3 = . 2 Example 5.3.4 Find the area bounded by y = x3 and y = x. To find the interval over which the area is bounded by these curves, we find the points of intersection.
214
CHAPTER 5. THE DEFINITE INTEGRAL
graph
x3 = x ↔ x3 − x = 0 ↔ x(x2 − 1) = 0 ↔ x = 0, x = 1, x = −1. The curve y = x is below y = x3 on [−1, 0] and the curve y = x3 is below the curve y = x on [0, 1]. The required area is A, where Z 0 Z 1 3 A= (x − x) dx + (x − x3 ) dx −1
0
1 1 4 1 2 1 2 x4 = x − x + x − 4 2 2 4 0 −1 1 1 1 1 = − + − 2 4 2 4 1 = 2
0
Exercises 5.3 Find the area bounded by the given curves. 1. y = x2 , y = x3 3. y = x2 , y =
√ x
2. y = x4 , y = x3 4. y = 8 − x2 , y = x2 −π π ,x = 2 2
5. y = 3 − x2 , y = 2x
6. y = sin x, y = cos x, x =
7. y = x2 + 4x, y = x
8. y = sin 2x, y = x, x =
9. y 2 = 4x, x − y = 0
10. y = x + 3, y = cos x, x = 0, x =
Evaluate each of the following integrals:
π 2 π 2
5.3. INTEGRATION BY SUBSTITUTION
11.
Z
13.
Z
15.
Z
17.
Z
19.
Z
21.
Z
23.
Z
25.
Z
27.
Z
sec x tan x dx
29.
Z
(arcsin x)4 √ dx 1 − x2
31.
Z
sin 3x dx x2
e x dx 2
3
x tan(x + 1) dx 2
csc (2x − 1) dx 2
3
x cosh(x + 1) dx csc(5x − 7) dx 2
3
x coth(x ) dx 5
2
tan x sec x dx 3
1
xe
x2
dx
215
12.
Z
cos 5x dx
14.
Z
x sin(x2 ) dx
16.
Z
sec2 (3x + 1) dx
18.
Z
x sinh(x2 ) dx
20.
Z
sec(3x + 5) dx
22.
Z
x tanh(x2 + 1) dx
24.
Z
sin3 x cos x dx
26.
Z
cot3 x csc2 x dx
28.
Z
csc3 x cot x dx
30.
Z
(arctan x)3 dx 1 + x2
32.
Z
0
33.
Z
35.
0
sin(3x)dx
0 π/4
cos(4x) dx
34.
3
Z
0
Z
π/6
0 π/2 3
sin x cos x dx
36.
Z 0
1 dx (3x + 1)
π/6
cos3 (3x) sin 3x dx
216
CHAPTER 5. THE DEFINITE INTEGRAL
5.4
Integration by Parts
The product rule of differentiation yields an integration technique known as integration by parts. Let us begin with the product rule: du(x) dv(x) d (u(x)v(x)) = v(x) + u(x) . dx dx dx On integrating each term with respect to x from x = a to x = b, we get b
Z a
d (u(x)v(x)) dx = dx
b
Z
v(x)
a
du(x) dx
dx +
b
Z
u(x) a
dv(x) dx
dx.
By using the differential notation and the fundamental theorem of calculus, we get Z b Z b 0 b v(x)u (x) dx + u(x)v 0 (x) dx. [u(x)v(x)]a = a
a
The standard form of this integration by parts formula is written as Z b Z b 0 b v(x)u0 (x) dx (i) u(x)v (x) dx = [u(x)v(x)]a − a
a
(ii)
and Z
udv = uv −
Z
vdu
We state this result as the following theorem: Theorem 5.4.1 (Integration by Parts) If u(x) and v(x) are two functions that are differentiable on some open interval containing [a, b], then (i)
b
Z
0
u(x)v (x) dx =
[u(x)v(x)]ba
for definite integrals and (ii)
b
v(x)u0 (x) dx a
a
Z
−
Z
udv = uv −
Z
for indefinite integrals.
vdu
5.4. INTEGRATION BY PARTS
217
Proof. Suppose that u and v are differentiable on some open interval containing [a, b]. For each x on [a, b], let Z x Z x 0 F (x) = u(x)v (x)dx + v(x)u0 (x)dx. a
a
Then, for each x on [a, b], F 0 (x) = u(x)v 0 (x) + v(x)u0 (x) d (u(x)v(x)). = dx Hence, there exists some constant C such that for each x on [a, b], F (x) = u(x)v(x) + C. For x = a, we get F (a) = 0 = u(a)v(a) + C and, hence, C = −u(a)v(a). Then, b
Z
0
u(x)v (x)dx + a
b
Z
v(x)u0 (x)dx = F (b) a
= u(b)v(b) + C = u(b)v(b) − u(a)v(a). Consequently, Z b Z b 0 u(x)v (x)dx = [u(b)v(b) − u(a)v(a)] − v(x)u0 (x)dx. a
a
This completes the proof of Theorem 5.4.1. Remark 19 The “two parts” of the integrand are “u(x)” and “v 0 (x)dx” or “u” and “dv”. It becomes necessary to compute u0 (x) and v(x) to make the integration by parts step. Example 5.4.1 Evaluate the following integrals:
218 (i)
(iv)
CHAPTER 5. THE DEFINITE INTEGRAL Z Z
x sin x dx
arcsin x dx
(ii)
Z
(v)
Z
xe
−x
dx
arccos x dx
(iii)
Z
(ln x) dx
(vi)
Z
x2 ex dx
(i) We let u = x and dv = sin x dx. Then du = dx and Z v(x) = sin x dx = − cos x + c. We drop the constant c, since we just need one v(x). Then, by the integration by parts theorem, we get Z Z x sin x dx = udv Z = uv − vdu Z = x(− cos x) − (− cos x) dx = −x cos x + sin x + c.
−x
(ii) We let u = x, du = dx, dv = e dx, v = Z
xe
−x
−x
dx = x(−e ) −
Z Z
e−x dx = −e−x . Then, (−e−x ) dx
= −xe−x − e−x + c. 1 dx, dv = dx, v = x. Then, x Z Z 1 ln x dx = x ln x − x · dx x = x ln x − x + c.
(iii) We let u = (ln x), du =
5.4. INTEGRATION BY PARTS
219
1 (iv) We let u = arcsin x, du = √ dx, dv = dx, v = x. Then, 1 − x2 Z Z x arcsin x dx = x arcsin x − √ dx. 1 − x2 To evaluate the last integral, we make the substitution y = 1 − x2 . Then, dy = −2xdx and x dx = (−1/2)du and hence Z Z (−1/2)du x √ dx = u1/2 1 − x2 Z 1 =− u−1/2 du 2 = −u1/2 + c √ = − 1 − x2 + c. Therefore, Z
arcsin x dx = x arcsin x −
√ 1 − x2 + c.
(v) Part (v) is similar to part (iv) and is left as an exercise. Z 2 x (vi) First we let u = x , du = 2x dx, dv = e dx, v = ex dx = ex . Then, Z Z 2 x 2 x x e dx = x e − 2xex dx Z 2 x = x e − 2 xex dx. To evaluate the last integral, we let u = x, du = dx, dv = ex dx, v = ex . Then Z Z x x xe dx = xe − ex dx = xex − ex + c. Therefore, Z
x2 ex dx = x2 ex − 2(xex − ex + c) = x2 ex − 2xex + 2ex − 2c = ex (x2 − 2x + 2) + D.
220
CHAPTER 5. THE DEFINITE INTEGRAL
Example 5.4.2 Evaluate the given integrals in terms of integrals of the same kind but with a lower power of the integrand. Such formulas are called the reduction formulas. Apply the reduction formulas for n = 3 and n = 4. Z Z Z n m+2 (i) sin x dx (ii) csc x dx (iii) cosn x dx (iv) Z secm+2 x dx (i) We let u = (sin x)n−1 , du = (n − 1)(sin x)n−2 cos x dx Z dv = sin x dx, v = sin x dx = − cos x. Then Z Z n sin x dx = (sin x)n−1 (sin x dx) Z n−1 = (sin x) (− cos x) − (− cos x)(n − 1)(sin x)n−2 cos x dx Z n−1 = −(sin x) cos x + (n − 1) (sin x)n−2 (1 − sin2 x) dx Z n−1 = −(sin x) cos x + (n − 1) (sin x)n−2 dx Z − (n − 1) sinn x dx. We now use algebra to solve the integral as follows: Z Z Z n n n−1 sin x dx + (n − 1) sin x dx = −(sin x) cos x + (n − 1) sinn−2 x dx Z Z n n−1 n sin x dx = −(sin x) cos x + (n − 1) sinn−2 x dx Z Z −1 n−1 n n−1 sin x dx = (sin x) cos x + sinn−2 x dx . (1) n n We have reduced the exponent of the integrand by 2. For n = 3, we get Z Z −1 2 3 2 sin x dx = (sin x) cos x + sin x dx 3 3 −1 −2 = (sin x)2 cos x cos x + c. 3 3
5.4. INTEGRATION BY PARTS For n = 2, we get Z
221
Z −1 1 sin x dx = (sin x) cos x + 1 dx 2 2 −1 x = sin x cos x + + c 2 2 1 = (x − sin x cos x) + c. 2 2
For n = 4, we get Z −1 sin4 x dx = (sin x)3 cos x + 4 −1 = (sin x)3 cos x + 4
Z 3 sin2 x dx 4 3 1 · (x − sin x cos x) + c. 4 2
In this way, we have a reduction formula by which we can compute the integral of any positive integral power of sin x. If n is a negative integer, then it is useful to go in the direction as follows: Suppose n = −m, where m is a positive integer. Then, from equation (1) we get Z Z 1 n−1 n−2 n−1 sin x dx = (sin x) cos x + (sin x)n dx n n Z Z 1 n n−2 n−1 sin x dx = (sin x) cos x + (sin x)n dx n−1 n−1 Z 1 sin−m−2 x dx = (sin x)−m−1 cos x −m − 1 Z −m (sin x)−m dx + −m − 1 Z Z −1 m m+2 m csc x dx = (csc x) cot x + (csc x)m dx . (2) m+1 m+1 This gives us the reduction formula for part (iii). Also, Z Z −1 n−2 n n−2 (csc x ) cot x + (csc xn−2 ) dx. csc x dx = n−1 n−1
222
CHAPTER 5. THE DEFINITE INTEGRAL
(iii) We can derive a formula by a method similar to part (i). However, let us make use formula to get it. Recall that πof a trigonometric π reduction cos x = sin − x and cos − x = sin x. Then 2 2 Z Z π n n π cos x dx = sin − x dx let u = − x, du = −dx 2 2 Z = sinn (u)(−du) Z = − sinn udu Z −1 n−1 n−1 n−2 =− (sin u) cos u + sin udu (by (1)) n n n−1 π 1 π = sin −x cos −x n 2Z 2 n−2 π π n−1 − sin −x d −x n 2 2 Z Z n−1 1 n n−1 cos x dx = (cos x) sin x + cosn−2 x dx . (3) n n To get part (iv) we replace n by −m and get Z Z −m − 1 1 −m −m−1 cos x dx = (cos x) sin x + cos−m−2 x dx −m −m Z Z −1 m+1 m m sec x dx = (sec x) tan x + secm+2 x dx. m m On solving for the last integral, we get Z
m+2
sec
1 m x dx = (sec x)m tan x + m+1 m+1
Z
secm x dx .
(4)
Z 1 n−2 n−2 sec x tan x + secn−2 x dx. Also, sec x dx = n−1 n−1 In parts (ii), (iii) and (vi) we leave the cases for n = 3 and 4 as an exercise. These are handled as in part (i). Z
n
Example 5.4.3 Develop the reduction formulas for the following integrals:
5.4. INTEGRATION BY PARTS (i)
Z
n
tan x dx
(ii)
Z
223
n
cot x dx
(iii)
Z
n
sinh x dx
(iv)
Z
coshn x dx
(i) First, we break tan2 x = sec2 x − 1 away from the integrand: Z
n
tan x dx =
Z
tann−2 x · tan2 x dx
Z
tann−2 x(sec2 x − 1) dx Z Z Z n n−2 2 tan x dx = tan x sec x dx − tann−2 x dx. =
For the middle integral, we let u = tan x as a substitution. Z
n
Z
Z
du − tann−2 x dx Z un−1 = − tann−2 x dx n−1 Z (tan x)n−1 = − tann−2 x dx. n−1
tan x dx =
n−2
u
Therefore,
Z
(tan x)n−1 tan x dx = − n−1
Z
tan x dx = ln | sec x| + c for n = 1.
n
Z
tann−2 x dx n 6= 1 .
(5)
224
CHAPTER 5. THE DEFINITE INTEGRAL
π (ii) We use the reduction formula tan − x = cot x in (5). 2 Z Z π π cotn x dx = tann − x dx; let u = − x, du = −dx 2 2 Z = − tann u(−du) Z = − tann u du Z tann−1 (u) n−2 =− − tan u du , n 6= 1 n−1 Z cotn−1 x =− − cotn−2 x(−dx), n 6= 1 n−1 Z cotn−1 x =− + cotn−2 x dx, n 6= 1 n−1 Z cot x dx = ln | sin x| + c, for n = 1. Therefore,
(iii)
Z
n
Z
cotn−1 x cot (x) dx = − + n−1
Z
cot x dx = ln | sin x| + c.
n
sinh x dx =
Z
Z
cotn−2 x dx, n 6= 1
(6)
(sinhn−1 x)(sinh x dx); u = sinhn−1 x, dv = sinh x dx n−1
= sinh
n−1
= sinh
n−1
= sinh
n−1
= sinh
x cosh x −
Z
cosh x · (n − 1) sinhn−2 x cosh xdx
x cosh x − (n − 1)
Z
sinhn−2 x(cosh2 x) dx
x cosh x − (n − 1)
Z
sinhn−2 x(1 + sinh2 x) dx
x cosh x − (n − 1)
Z
n−2
sinh
x dx − (n − 1)
Z
sinhn x dx.
5.4. INTEGRATION BY PARTS
225
On bringing the last integral to the left, we get n
Z
(iv)
Z
sinh x dx = sinh
Z
1 n−1 sinh x dx = sinhn−1 cosh x − n n
n
n−1
x cosh x − (n − 1)
n
n
cosh x dx =
Z
(coshn−1 x)(cosh x dx); n−1
= cosh
n−1
= cosh
n−1
= cosh
n−1
= cosh
(x) sinh x −
Z
Z Z
sinhn−2 x dx sinhn−2 x dx .
(7)
u = coshn−1 x, dv = cosh x dx, v = sinh x
sinh x(n − 1) coshn−2 x sinh xdx
x sinh x − (n − 1)
Z
coshn−2 x sinh2 x dx
x sinh x − (n − 1)
Z
coshn−2 x(cosh2 x − 1) dx
x sinh x − (n − 1)
Z
coshn x dx
R +(n − 1) coshn−2 x dx Z
n
cosh x dx +(n − 1)
Z
coshn x dx = coshn−1 x sinh x
R +(n − 1) coshn−2 x dx n
Z
Z
n
n−1
cosh x dx = cosh
x sinh x + (n − 1)
1 n−1 cosh x dx = coshn−1 x sinh x + n n n
Z
coshn−2 x dx
Z
coshn−2 x dx
Example 5.4.4 Develop reduction formulas for the following:
(8)
226 (i)
CHAPTER 5. THE DEFINITE INTEGRAL Z
n x
x e dx
(ii)
Z
(v)
Z
(iv)
Z
x sin x
(vii)
Z
eax cos(ln x) dx
n
n
x ln x dx n
x cos x dx
(iii)
Z
(ln x)n dx
(vi)
Z
eax sin(ln x) dx
(i) We let u = xn , dv = ex dx, du = nxn−1 dx, v = ex . Then Z Z n x n x x e dx = x e − ex (nxn−1 ) dx Z n x = x e − n xn−1 ex dx. Therefore, Z
n x
n x
x e dx = x e − n
Z
xn−1 ex dx .
(9)
(ii) We let u = ln x, du = (1/x) dx, dv = xn dx, v = xn+1 /(n + 1). Then, Z Z n+1 xn+1 x 1 n x ln x dx = (ln x) − · dx n+1 n+1 x Z n+1 1 x (ln x) = − xn dx n+1 n+1 n+1 xn+1 x (ln x) = − + c. n+1 (n + 1)2 Therefore, Z
xn ln x dx =
xn+1 [(n + 1) ln(x) − 1] + c . (n + 1)2
1 (iii) We let u = (ln x)n , du = n(ln x)n−1 dx, dv = dx, v = x. Then, x Z Z 1 n n (ln x) dx = x(ln x) − x · n(ln x)n−1 · dx x Z = x(ln x)n − n (ln x)n−1 dx
(10)
5.4. INTEGRATION BY PARTS
227
Therefore, Z
n
n
(ln x) dx = x(ln x) − n
Z
(ln x)n−1 dx .
(11)
(iv) We let u = xn , du = nxn−1 dx, dv = sin x dx, v = − cos x. Then,
Z
n
n
x sin x dx = x (− cos x) − n
= −x cos x = n
Z Z
(− cos x)nxn−1 dx (∗) x
n−1
cos x dx.
Again in the last integral we let u = xn−1 , du = (n − 1)xn−2 dx, dv = cos x dx, v = sin x. Then Z
x
n−1
Z
sin x(n − 1)xn−2 dx Z n−1 =x sin x − (n − 1) xn−2 sin x dx.
cos x dx = x
n−1
sin x −
(∗∗)
By substitution, we get the reduction formula Z Z n n n−1 n−2 x sin x dx = −x cos x + n x sin x − (n − 1) x sin x dx Z
n
n
x sin x dx = −x cos x + nx
n−1
sin x − n(n − 1)
Z
xn−2 sin x dx(12)
(v) We can use (∗∗) and (∗) in part (iv) to get the following: Z Z n−1 n−1 x cos x dx = x sin x − (n − 1) xn−2 sin x dx Z n−1 n−2 n−3 =x sin x − (n − 1) −x cos x + (n − 2) x cos x dx
by (∗∗) by (∗)
228
CHAPTER 5. THE DEFINITE INTEGRAL Z
x
n−1
cos x dx = x
n−1
x+(n−1)x
n−2
cos x−(n−1)(n−2)
Z
xn−3 cos x dx.
If we replace n by n + 1 throughout the last equation, we get Z
n
n
x cos x dx = x sin x + nx
n−1
cos x − n(n − 1)
Z
xn−2 cos x dx (13)
1 ax e , u = sin(bx), du = b cos(bx) dx. Then a Z Z 1 ax b ax e sin(bx) dx = e sin(bx) − eax cos(bx) dx. (∗ ∗ ∗) a a
(vi) We let dv = eax dx, v =
1 ax e , u = cos bx. Then a Z Z 1 ax b ax e cos(bx) dx = e cos bx + eax sin bx dx (∗ ∗ ∗∗) a a
In the last integral, we let dv = eax dx, v =
First we substitute (∗ ∗ ∗∗) into (∗ ∗ ∗) and then solve for Z
Z
eax sin bx dx.
Z 1 ax b 1 ax b ax e sin bx dx = e sin bx − e cos bx + e sin bx dx a a a a Z eax b2 = 2 (a sin bx − b cos bx) − 2 ax sin bx dx a a Z ax 2 e b eax sin bx dx = 2 (a sin bx − b cos bx dx) 1+ 2 a a ax
Z
eax sin bx dx =
eax (a sin bx − b cos bx) + c . a2 + b2
(14)
5.4. INTEGRATION BY PARTS
229
(vii) We start with (∗ ∗ ∗∗) and substitute in (14) without the constant c and get Z Z 1 ax b ax e cos bx dx = e cos bx + eax sin bx dx a a 1 ax b eax = e cos bx + (a sin bx − b cos bx) + c a a a2 b2 1 b2 ax 1 =e cos bx + 2 cos bx + c b sin bx − a a + b2 a eax = 2 [b sin b + a cos bx] + c. a + b2 Therefore, Z
eax cos bx dx =
eax [b sin bx + a cos bx] + c . a2 + b2
(15)
Exercises 5.4 Evaluate the following integrals and check your answers by differentiation. You may use the reduction formulas given in the examples. 1.
Z
4.
Z
7.
Z
xe
−2x
dx
3
(ln x) dx
10.
Z
13.
Z
16.
Z
2
x sin 2x dx
arcsin(2x) dx 3
sec x dx 2
x ln x dx
2.
Z
5.
Z
8.
Z
11.
Z
14.
Z
17.
Z
3
x ln x 2x
e sin 3x dx 2
x cos 3x dx
arccos(2x) dx 5
sec x dx 3
x sin x dx
3.
Z
dx x(ln x)4
6.
Z
e3x cos 2x dx
9.
Z
x ln(x + 1) dx
12.
Z
arctan(2x) dx
15.
Z
tan5 x dx
18.
Z
x3 cos x dx
230
CHAPTER 5. THE DEFINITE INTEGRAL
19.
Z
22.
Z
25.
Z
cos x dx
28.
Z
2
31.
Z
34.
Z
37.
Z
40.
Z
43.
Z
46.
Z
arctanh (2x)dx
50.
Z
xarccsc x dx
5.5
x sinh x dx
x arctan x dx 3
sinh x dx 2
x sinh x dx 3
x cosh x dx
x sin(3x) dx x
x 2 dx 2
3
x (ln x) dx
20.
Z
23.
Z
26.
Z
sin x dx
29.
Z
2
32.
Z
35.
Z
38.
Z
41.
Z
44.
Z
47.
Z
x cosh x dx
xarccot x dx 4
cosh x dx 2
x cosh x dx 2 2x
x e dx
x cos(x + 1)dx 2x
x 10 dx
arcsinh (3x)dx
arccoth (3x)dx
21.
Z
x(ln x)3 dx
24.
Z
sin3 x dx
27.
Z
cos4 x dx
30.
Z
sinh3 x dx
33.
Z
x3 sinh x dx
36.
Z
x3 eâ&#x2C6;&#x2019;x dx
39.
Z
x ln(x + 1)dx
42.
Z
x2 103x dx
45.
Z
arccosh (2x)dx
48.
Z
xarcsec x dx
Logarithmic, Exponential and Hyperbolic Functions
With the Fundamental Theorems of Calculus it is possible to rigorously develop the logarithmic, exponential and hyperbolic functions.
5.5. LOGARITHMIC, EXPONENTIAL AND HYPERBOLIC FUNCTIONS231 Definition 5.5.1 For each x > 0 we define the natural logarithm of x, denoted ln x, by the equation Z x 1 ln(x) = dt , x > 0. 1 t Theorem 5.5.1 (Natural Logarithm) The natural logarithm, ln x, has the following properties: (i)
1 d (ln x) = > 0 for all x > 0. dx x The natural logarithm is an increasing, continuous and differentiable function on (0, ∞).
(ii) If a > 0 and b > 0, then ln(ab) = ln(a) + ln(b). (iii) If a > 0 and b > 0, then ln(a/b) = ln(a) + ln(b). (iv) If a > 0 and n is a natural number, then ln(an ) = n ln a. (v) The range of ln x is (−∞, ∞). (vi) ln x is one-to-one and has a unique inverse, denoted ex . Proof. (i) Since 1/t is continuous on (0, ∞), (i) follows from the Fundamental Theorem of Calculus, Second Form. (ii) Suppose that a > 0 and b > 0. Then Z
ab
1 dt t 1 Z ab Z a 1 1 dt + dt = t 1 t a Z b 1 1 1 adu ; u = t, du = dt = ln a + a a 1 au = ln a + ln b.
ln(ab) =
232
CHAPTER 5. THE DEFINITE INTEGRAL
(iii) If a > 0 and b > 0, then ln
a b
Z (a) b 1 = dt t 1 Z a Z a b 1 1 b b = dt + dt; u = t, du = dt a a 1 t a t Z a Z 1 1 1 a = dt + dt au b 1 t b b Z a Z b 1 1 = dt − du 1 u 1 t = ln a − ln b.
(iv) If a > 0 and n is a natural number, then n
Z
an
1 dt ; t = un , dt = nun−1 du t Z1 a 1 = · nun−1 du n u 1 Z a 1 =n du 1 u = n ln a
ln(a ) =
as required. (v) From the partition {1, 2, 3, 4, · · · }, we get the following inequality using upper and lower sum approximations:
graph
13 1 1 1 1 1 = + + < ln 4 < 1 + + . 12 2 3 4 2 3
5.5. LOGARITHMIC, EXPONENTIAL AND HYPERBOLIC FUNCTIONS233 Hence, ln 4 > 1. ln(4n ) = n ln 4 > n and ln 4−n = −n ln 4 < −n. By the intermediate value theorem, every interval (−n, n) is contained in the range of ln x. Therefore, the range of ln x is (−∞, ∞), since the derivative of ln x is always positive, ln x is increasing and hence one-toone. The inverse of ln x exists. (vi) Let e denote the number such that ln(e) = 1. Then we define y = ex if and only if x = ln(y) for x ∈ (−∞, ∞), y > 0. This completes the proof. Definition 5.5.2 If x is any real number, we define y = ex if and only if x = ln y. Theorem 5.5.2 (Exponential Function) The function y = ex has the following properties: (i) e0 = 1, ln(ex ) = x for every real x and
d (ex ) = ex . dx
(ii) ea · eb = ea+b for all real numbers a and b. (iii)
ea = ea−b for all real numbers a and b. eb
(iv) (ea )n = ena for all real numbers a and natural numbers n. Proof. (i) Since ln(1) = 0, e0 = 1. By definition y = ex if and only if x = ln(y) = ln(ex ). Suppose y = ex . Then x = ln y. By implicit differentiation, we get 1 dy dy , = y = ex . 1= y dx dx Therefore, d (ex ) = ex . dx
234
CHAPTER 5. THE DEFINITE INTEGRAL
(ii) Since ln x is increasing and, hence, one-to-one, ea · eb = ea+b ↔ ln(ea · eb ) = ln(ea+b ) ↔ ln(ea ) + ln(eb ) = a + b ↔ a + b = a + b. It follows that for all real numbers a and b, ea · eb = ea+b . (iii)
ea = ea−b ↔ eb a e ln b = ln(ea−b ) ↔ e ln(ea ) − ln(eb ) = a − b ↔ a − b = a − b.
It follows that for all real numbers a and b, ea = ea−b . eb (iv)
(ea )n = ena ↔ ln((ea )n ) = ln(ena ) ↔ n ln(ea ) = na ↔ na = na.
Therefore, for all real numbers a and natural numbers n, we have (ea )n = ena .
5.5. LOGARITHMIC, EXPONENTIAL AND HYPERBOLIC FUNCTIONS235 Definition 5.5.3 Suppose b > 0 and b 6= 1. Then we define the following: (i) For each real number x, bx = ex ln b . (ii) y = logb x =
ln x . ln b
Theorem 5.5.3 (General Exponential Function) Suppose b > 0 and b 6= 1. Then (i) ln(bx ) = x ln b, for all real numbers x. (ii)
d (bx ) = bx ln b, for all real numbers x. dx
(iii) bx1 · bx2 = bx1 +x2 , for all real numbers x1 and x2 . (iv)
bx1 = bx1 −x2 , for all real numbers x1 and x2 . bx2
(v) (bx1 )x2 = bx1 x2 , for all real numbers x1 and x2 . Z bx + c. (vi) bx dx = ln b Proof. (i) ln(bx ) = ln(ex ln b ) = x ln b (ii)
d d x (b ) = (ex ln b ) = ex ln b · (ln b) dx dx = bx ln b.
(iii) bx1 · bx2 = ex1 ln b · ex2 ln b = e(x1 ln b+x2 ln b) = e(x1 +x2 ) ln b = b(x1 +x2 )
(by the chain rule)
236
CHAPTER 5. THE DEFINITE INTEGRAL bx1 bx2
(iv)
=
ex1 ln b ex2 ln b
= ex1 ln b−x2 ln b = e(x1 −x2 ) ln b = b(x1 −x2 ) . (v) By Definition 5.5.3 (i), we get x1 )
(bx1 )x2 = ex2 ln(b
= ex2 ln(e
x1 ln b )
= ex2 ·x1 ln b = e(x1 x2 ) ln b = bx1 x2 .
(vi) Since d x (b ) = bx ln b, dx we get Z
bx (ln b) dx = bx + c, Z ln b bx dx = bx + c, Z bx ex dx = + D, ln b
where D is some constant. This completes the proof. Theorem 5.5.4 If u(x) > 0 for all x, and u(x) and v(x) are differentiable functions, then we define y = (u(x))v(x) = ev(x) ln(u(x)) .
5.5. LOGARITHMIC, EXPONENTIAL AND HYPERBOLIC FUNCTIONS237 Then y is a differentiable function of x and dy d u0 (x) v(x) v(x) 0 v (x) ln(u(x)) + v(x) = (u(x)) = (u(x)) . dx dx u(x) Proof. This theorem follows by the chain rule and the product rule as follows d d v ln u u0 u1 0 0 v v ln u v [u ] = [e ]=e v ln u + v = u v ln u + v . dx dx u u
Theorem 5.5.5 The following differentiation formulas for the hyperbolic functions are valid. (i) (iii) (v)
d (sinh x) = cosh x dx d (tanh x) = sech2 x dx d (sech x) = −sech x tanh x dx
(ii)
d (cosh x) = sinh x dx
(iv)
d (coth x) = −csch2 x dx
(vi)
d (csch x) = −csch x coth x dx
Proof. We use the definitions and properties of hyperbolic functions given in Chapter 1 and the differentiation formulas of this chapter.
ex − e−x 2
ex + e−x = cosh x. 2
(i)
d d (sinh x) = dx dx
(ii)
d d (cosh x) = dx dx
ex + e−x 2
=
d d (iii) (tanh x) = dx dx
sinh x cosh x
=
(cosh x)(cosh x) − sinh(sinh x) (cosh x)2
=
ex − e−x = sinh x. 2
1 cosh2 x − sinh2 x = = sech2 x = 2 2 (cosh x) cosh x)
238 (iv)
CHAPTER 5. THE DEFINITE INTEGRAL d d (coth x) = (tanh x)−1 = −1(tanh x)−2 · sech2 x dx dx cosh2 x 1 1 =− · =− 2 2 sinh x cosh x sinh2 x = −csch2 x.
(v)
d d (sech x) = (cosh x)−1 = −1(cosh x)−2 · sinh x dx dx = − sech x tanh x.
(vi)
d d (csch x) = (sinh x)−1 = −1(sinh x)−2 · cosh x dx dx = − coth x csch x.
This completes the proof. Theorem 5.5.6 The following integration formulas are valid: (i)
(iii)
(v)
Z
sinh x dx = cosh x + c Z
Z
tanh x dx = ln(cosh x) + c x
sech x dx = 2 arctan(e ) + c
(ii)
Z
cosh x dx = sinh x + c
(iv)
Z
coth xdx = ln | sinh x| + c
(vi)
Z
x
csch x dx = ln tanh
+c 2
Proof. Each formula can be easily verified by differentiating the right-hand side to get the integrands on the left-hand side. This proof is left as an exercise. Theorem 5.5.7 The following differentiation and integration formulas are valid:
5.5. LOGARITHMIC, EXPONENTIAL AND HYPERBOLIC FUNCTIONS239 d 1 (i) (arcsinh x) = √ dx 1 + x2 d 1 (iii) (arccosh x) = √ dx x2 − 1 d 1 (v) (arctanh x) = , |x| < 1 dx 1 − x2
(ii)
Z
dx √ = arcsinh x + c 1 + x2
(iv)
Z
dx √ = arccosh x + c x2 − 1
(vi)
Z
1 dx = arctanh x + c 1 − x2
Proof. This theorem follows directly from the following definitions: (1) arcsinh x = ln(x + 1 (3) arctanh x = ln 2
√ 1 + x2 )
1+x 1−x
(2) arccosh x = ln(x +
√
x2 − 1)
, |x| < 1.
The proof is left as an exercise. Exercises 5.5 1. Prove Theorem 5.5.6. 2. Prove Theorem 5.5.7. 3. Show that sinh mx and cosh mx are linearly independent if m 6= 0. (Hint: Show that the Wronskian W (sinh mx, cosh mx) is not zero if m 6= 0.) 4. Show that emx and e−mx are linearly independent if m 6= 0. 5. Show that solution of the equation y 00 − m2 y = 0 can be expressed as y = c1 emx + c2 e−mx . 6. Show that every solution of y 00 − m2 y = 0 can be written as y = A sinh mx + B cosh mx. 7. Determine the relation between c1 and c2 in problem 5 with A and B in problem 6. 8. Prove the basic identities for hyperbolic functions:
240
CHAPTER 5. THE DEFINITE INTEGRAL (i) sinh(x + y) = sinh x cosh y + cosh x sinh y. (ii) sinh(x − y) = sinh x cosh y − cosh x sinh y.
(iii) cosh(x + y) = cosh x cosh y + sinh x sinh y. (iv) cosh(x − y) = cosh x cosh y − sinh x sinh y. (v) sinh 2x = 2 sinh x cosh x. (vi) cosh2 x + sinh2 x = 2 cosh2 x − 1 = 1 + 2 sinh2 x = cosh 2x. (vii) cosh2 x − sinh2 x = 1, 1 − tanh2 x = sech2 x, coth2 x − 1 = csch2 x. 9. Eliminate the radical sign using the given substitution: (i) (iii)
√ a2 + x2 , x = a sinh t √
(ii)
√ a2 − x2 , x = tanh t
x2 − a2 , x = a cosh t.
10. Compute y 0 in each of the following: (i) y = 2 sinh(3x) + 4 cosh(2x)
(ii) y = 4 tanh(5x) − 6 coth(3x)
(iii) y = x sech (2x) + x2 csch (5x)
(iv) y = 3 sinh2 (4x + 1)
(v) y = 4 cosh2 (2x − 1)
(vi) y = sinh(2x) cosh(3x)
11. Compute y 0 in each of the following: (i) y = x2 e−x
3
(ii) y = 2x
(iv) y = log10 (x2 + 1)
2
(iii) y = (x2 + 1)sin(2x)
(v) y = log2 (sec x + tan x)(vi) y = 10(x
3 +1)
12. Compute y 0 in each of the following: (i) y = x ln x − x 1 (iv) y = ln 2
1+x 1−x
(ii) y = ln(x +
√ x2 − 4)
(v) y = arcsinh (3x)
(iii) y = ln(x +
√ 4 + x2 )
(vi) y = arccosh (3x)
5.5. LOGARITHMIC, EXPONENTIAL AND HYPERBOLIC FUNCTIONS241 13. Evaluate each of the following integrals: (i)
(iv)
Z
sinh(3x) dx
Z
x sinh 2x dx
(ii)
Z
(v)
Z
3 x2
xe
dx
x cosh 3x dx
(iii)
Z
x2 ln(x + 1) dx
(vi)
Z
x4x dx
2
14. Evaluate each of the following integrals: (i)
(iv)
Z
arcsinh x dx
Z
dx √ 4 − x2
(ii)
Z
arccosh x dx
(v)
Z
dx √ 4 + x2
(iii)
Z
arctanh x dx
(vi)
Z
dx √ x2 − 4
15. Logarithmic Differentiation is a process of computing derivatives by first taking logarithms and then using implicit differentiation. Find y 0 in each of the following, using logarithmic differentiation. (i) y =
(x2 + 1)3 (x2 + 4)10 (x2 + 2)5 (x2 + 3)4
(iii) y = (sin x + 3)(4 cos x+7) 2
(v) y = (ex + 1)(2x+1)
(ii) y = (x2 + 4)(x
3 +1)
(iv) y = (3 sinh x + cos x + 5)(x (vi) y = x2 (x2 + 1)(x
3 +1)
In problems 16–30, compute f 0 (x) each f (x). 16. f (x) =
x
Z
3
sinh (t)dt
17. f (x) =
1
18. f (x) =
Z
20. f (x) =
cosh5 (t)dt x
cosh x 2 3/2
(1 + t )
dt
19. f (x) =
Z
sinh x
Z
x2
Z
(1 + t3 )1/2 dt tanh x 2
(ln x)2
ln x
sech x
(4 + t2 )5/2 dt
21. f (x) =
Z
ex
(1 + 4t2 )π dt 2 ex
3 +1)
242
CHAPTER 5. THE DEFINITE INTEGRAL
22. f (x) =
24. f (x) =
Z
ecos x
1 dt (1 + t2 )3/2
esin x
Z
23. f (x) =
(1 + 2t )
dt
25. f (x) =
42x
26. f (x) =
arcsinh x
28. f (x) =
log3 x
(1 + 5t3 )1/2 dt
Z
5cos x
Z
arccoth x
e
3
1 dt (1 + t2 )3/2
−t2
dt
27. f (x) =
Z
4x
Z
cosh(x3 )
2
et dt 2
2x
29. f (x) =
4sin x
30. f (x) =
Z
1 dt (4 + t2 )5/2
log2 x
arccosh x
Z
3x
2x
53x 2 3/2
Z
3
e−t dt sinh(x2 )
sin(t2 )dt arctanh x
In problems 31–40, evaluate the given integrals. Z arctan x Z arcsin x e e √ 31. dx dx 32. 2 1+x 1 − x2 Z Z e2x 2 x3 dx 34. x e dx 35. 1 + e2x Z Z 3x 2 3x 37. e sec (2 + e )dx 38. 10cos x sin x dx 40.
Z
5.6
x 10x
2 +3
33.
Z
esin 2x cos 2x dx
36.
Z
ex cos(1 + 2ex )dx
39.
Z
4arcsec x √ dx x x2 − 1
dx
The Riemann Integral
In defining the definite integral, we restricted the definition to continuous functions. However, the definite integral as defined for continuous functions is a special case of the general Riemann Integral defined for bounded functions that are not necessarily continuous.
5.6. THE RIEMANN INTEGRAL
243
Definition 5.6.1 Let f be a function that is defined and bounded on a closed and bounded interval [a, b]. Let P = {a = x0 < x1 < x2 < ¡ ¡ ¡ < xn = b} be a partition of [a, b]. Let C = {ci : xiâ&#x2C6;&#x2019;1 â&#x2030;¤ ci â&#x2030;¤ xi , i = 1, 2, ¡ ¡ ¡ , n} be any arbitrary selection of points of [a, b]. Then the Riemann Sum that is associated with P and C is denoted R(P ) and is defined by R(P ) = f (c1 )(x1 â&#x2C6;&#x2019; x0 ) + f (c2 )(x2 â&#x2C6;&#x2019; x1 ) + ¡ ¡ ¡ + f (cn )(xn + xnâ&#x2C6;&#x2019;1 ) n X = f (ci )(xi â&#x2C6;&#x2019; xiâ&#x2C6;&#x2019;1 ). i=1
Let â&#x2C6;&#x2020;xi = xi â&#x2C6;&#x2019; xiâ&#x2C6;&#x2019;1 , i = 1, 2, ¡ ¡ ¡ , n. Let ||â&#x2C6;&#x2020;|| = max {â&#x2C6;&#x2020;xi }. We write 1â&#x2030;¤iâ&#x2030;¤n
R(P ) =
n X
f (ci )â&#x2C6;&#x2020;xi .
i=1
We say that lim
||â&#x2C6;&#x2020;||â&#x2020;&#x2019;0
n X
f (ci )â&#x2C6;&#x2020;xi = I
i=1
if and only if for each > 0 there exists some δ > 0 such that
n
X
f (c )â&#x2C6;&#x2020;x â&#x2C6;&#x2019; I
<
i i
i=1
whenever ||â&#x2C6;&#x2020;|| < δ for all partitions P and all selections C that define the Riemann Sum. If the limit I exists as a finite number, we say that f is (Riemann) integrable and write Z b
I=
f (x) dx.
a
Next we will show that if f is continuous, the Riemann integral of f is the definite integral defined by lower and upper sums and it exists. We first prove two results that are important. Definition 5.6.2 A function f is said to be uniformly continuous on its domain D if for each > 0 there exists δ > 0 such that if |x1 â&#x2C6;&#x2019; x2 | < δ, for any x1 and x2 in D, then |f (x1 ) â&#x2C6;&#x2019; f (x2 )| < .
244
CHAPTER 5. THE DEFINITE INTEGRAL
Definition 5.6.3 A collection C = {UÎą : UÎą is an open interval} is said to cover a set D if each element of D belongs to some element of C. Theorem 5.6.1 If C = {UÎą : UÎą is an open interval} covers a closed and bounded interval [a, b], then there exists a finite subcollection B = {UÎą1 , UÎą2 , ¡ ¡ ¡ , UÎąn } of C that covers [a, b]. Proof. We define a set A as follows: A = {x : x â&#x2C6;&#x2C6; [a, b] and [a, x] can be covered by a finite subcollection of C}. Since a â&#x2C6;&#x2C6; A, A is not empty. A is bounded from above by b. Then A has a least upper bound, say lub(A) = p. Clearly, p â&#x2030;¤ b. If p < b, then some UÎą in C contains p. If UÎą = (aÎą , bÎą ), then aÎą < p < bÎą . Since p = `ub(A), there exists some point aâ&#x2C6;&#x2014; of A between aÎą and p. There exists a subcollection B = {UÎą1 , ¡ ¡ ¡ , UÎąn } that covers [a, aâ&#x2C6;&#x2014; ]. Then the collection B1 = {UÎą1 , ¡ ¡ ¡ , UÎąn , UÎą } covers [a, bÎą ). By the definition of A, A must contain all points of [a, b] between p and bÎą . This contradicts the assumption that p = `ub(A). So, p = b and b â&#x2C6;&#x2C6; A. It follows that some finite subcollection of C covers [a, b] as required. Theorem 5.6.2 If f is continuous on a closed and bounded interval [a, b], then f is uniformly continuous on [a, b]. Proof. Let > 0 be given. If p â&#x2C6;&#x2C6; [a, b], then there exists δp > 0 such that |f (x) â&#x2C6;&#x2019; f (p)| < /3, whenever p â&#x2C6;&#x2019; δp < x < p + δp . Let Up = 1 1 p â&#x2C6;&#x2019; δp , p + δp . Then C = {Up : p â&#x2C6;&#x2C6; [a, b]} covers [a, b]. By The3 3 orem 5.6.1, some finite subcollection B = {Up1 , Up2 , . . . , Upn } of C covers 1 [a, b]. Let δ = min{δpi : i = 1, 2, ¡ ¡ ¡ , n}. Suppose that |x1 â&#x2C6;&#x2019; x2 | < δ for 3 any two points x1 and x2 of [a, b]. Then x1 â&#x2C6;&#x2C6; Upi and x2 â&#x2C6;&#x2C6; Upj for some pi and pj . We note that |pi â&#x2C6;&#x2019; pj | = |(pi â&#x2C6;&#x2019; x1 ) + (x1 â&#x2C6;&#x2019; x2 ) + (x2 â&#x2C6;&#x2019; pj )| â&#x2030;¤ |pi â&#x2C6;&#x2019; xi | + |x1 â&#x2C6;&#x2019; x2 | + |x2 â&#x2C6;&#x2019; pj | 1 1 < δpi + δ + δpj 3 3 â&#x2030;¤ max{δpi , δpj }.
5.6. THE RIEMANN INTEGRAL
245
It follows that both pi and pj are either in Upi or Upj . Suppose that pi and pj are both in Upi . Then |x2 â&#x2C6;&#x2019; pi | = |(x2 â&#x2C6;&#x2019; x1 )| + (x1 â&#x2C6;&#x2019; pi )| â&#x2030;¤ |x2 â&#x2C6;&#x2019; x1 | + |x1 â&#x2C6;&#x2019; pi | 1 < δ + δpi 3 < δpi . So, x1 , x2 , pi and pj are all in Upi . Then |f (x1 ) â&#x2C6;&#x2019; f (x2 )| = |(f (x1 ) â&#x2C6;&#x2019; f (pi )) + (f (pi ) â&#x2C6;&#x2019; f (x2 ))| â&#x2030;¤ |f (x1 ) â&#x2C6;&#x2019; f (pi )| + |f (pi ) â&#x2C6;&#x2019; f (x2 )| < + 3 3 < . By Definition 5.6.2, f is uniformly continuous on [a, b]. Theorem 5.6.3 If f is continuous on [a, b], then f is (Riemann) integrable and the definite integral and the Riemann integral have the same value. Proof. Let P = {a = x0 < x1 < x2 < . . . < xn = b} be a partition of [a, b] and C = {ci : xiâ&#x2C6;&#x2019;1 â&#x2030;¤ ci â&#x2030;¤ xi , i = 1, 2, . . . , n} be an arbitrary selection. For each i = 1, 2, . . . , n let mi = absolute minimum of f on [xiâ&#x2C6;&#x2019;1 , xi ] obtained at câ&#x2C6;&#x2014;i , f (câ&#x2C6;&#x2014;i ) = mi ; Mi = absolute maximum of f on [xiâ&#x2C6;&#x2019;1 , xi ] obtained at câ&#x2C6;&#x2014;â&#x2C6;&#x2014; i ) = Mi ; m = absolute minimum of f on [a, b]; M = absolute maximum of f on [a, b]; n X R(P ) = f (ci )â&#x2C6;&#x2020;xi , i=1
Then for each i = 1, 2, . . . , n, we have m(b â&#x2C6;&#x2019; a) â&#x2030;¤ â&#x2030;¤
n X
i=1 n X i=1
f (câ&#x2C6;&#x2014;i )(xi
â&#x2C6;&#x2019; xiâ&#x2C6;&#x2019;1 ) â&#x2030;¤
n X
f (ci )(xi â&#x2C6;&#x2019; xiâ&#x2C6;&#x2019;1 )
i=1
f (câ&#x2C6;&#x2014;â&#x2C6;&#x2014; i )(xi â&#x2C6;&#x2019; xiâ&#x2C6;&#x2019;1 ) â&#x2030;¤ M (b â&#x2C6;&#x2019; a).
246
CHAPTER 5. THE DEFINITE INTEGRAL
We recall that L(P ) =
n X
f (câ&#x2C6;&#x2014;i )â&#x2C6;&#x2020;xi ,
R(P ) =
n X
f (ci )â&#x2C6;&#x2020;xi , U (P ) =
i=1
i=1
n X
f (câ&#x2C6;&#x2014;â&#x2C6;&#x2014; i )â&#x2C6;&#x2020;xi .
i=1
We note that L(P ) and U (P ) are also Riemann sums and for every partition P , we have L(P ) â&#x2030;¤ R(P ) â&#x2030;¤ U (P ). To prove the theorem, it is sufficient to show that lub{L(P )} = glb{U (P )}. Since f is uniformly continuous, by Theorem 5.6.2, for each > 0 there is some δ > 0 such that |f (x)â&#x2C6;&#x2019;f (y)| < whenever |xâ&#x2C6;&#x2019;y| < δ for x and y in bâ&#x2C6;&#x2019;a [a, b]. Consider all partitions P , selections C = {ci }, C â&#x2C6;&#x2014; = {câ&#x2C6;&#x2014;i }, C â&#x2C6;&#x2014;â&#x2C6;&#x2014; = {câ&#x2C6;&#x2014;â&#x2C6;&#x2014; i } such that δ ||â&#x2C6;&#x2020;|| = max (xi â&#x2C6;&#x2019; xiâ&#x2C6;&#x2019;1 ) < . 1â&#x2030;¤iâ&#x2030;¤n 3 Then, for each i = 1, 2, . . . , n bâ&#x2C6;&#x2019;a â&#x2C6;&#x2014; |f (ci ) â&#x2C6;&#x2019; f (ci )| < bâ&#x2C6;&#x2019;a â&#x2C6;&#x2014;â&#x2C6;&#x2014; |f (ci ) â&#x2C6;&#x2019; f (ci )| < bâ&#x2C6;&#x2019;a
n
X
â&#x2C6;&#x2014; â&#x2C6;&#x2014;â&#x2C6;&#x2014; |U (P ) â&#x2C6;&#x2019; L(P )| = (f (ci ) â&#x2C6;&#x2019; f (ci ))â&#x2C6;&#x2020;xi
â&#x2C6;&#x2014; |f (câ&#x2C6;&#x2014;â&#x2C6;&#x2014; i ) â&#x2C6;&#x2019; f (ci )| <
i=1
â&#x2030;¤
m X
â&#x2C6;&#x2014; |f (câ&#x2C6;&#x2014;â&#x2C6;&#x2014; i ) â&#x2C6;&#x2019; f (ci )|â&#x2C6;&#x2020;xi
i=1
n X < â&#x2C6;&#x2020;xi b â&#x2C6;&#x2019; a i=1
= . It follows that lub{L(P )} = lim R(P )p = glb{U (P )} = I. ||â&#x2C6;&#x2020;||â&#x2020;&#x2019;0
5.6. THE RIEMANN INTEGRAL
247
By definition of the definite integral, I equals the definite integral of f (x) from x = a to x = b, which is also the Riemann integral of f on [a, b]. We write Z b
I=
f (x) dx.
a
This proves Theorem 5.6.2 as well as Theorem 5.2.1. Exercises 5.6 1. Prove Theorem 5.2.3. (Hint: For each partition P = {a = x0 < x1 < . . . < xn = b] of [a, b], g(b) − g(a) = [g(xn ) − g(xn−1 )] + [g(xn−1 ) − g(xn−2 )] + . . . + [g(x1 ) − g(x0 )] n X = [g(xi ) − g(xi−1 )] i=1
=
n X
g 0 (ci )(xi − xi−1 )
=
n X
f (ci )(xi − xi−1 )
(by Mean Value Theorem)
i=1
i=1
= R(P ) for some selection C = {ci : xi−1 < ci < xi , i = 1, 2, · · · , n}.) 2. Prove Theorem 5.2.3 on the linearity property of the definite integral. (Hint: ( n ) Z b X [Af (x) + bg(x)] dx = lim [Af (ci ) + Bg(ci )] · [xi − xi−1 ) a
||∆||→0
= lim
||∆||→0
=A =A
i=1
A
lim
||∆||→0
n X
i=1 n X
f (ci )∆xi + B f (ci )∆xi
i=1
f (x)dx + B a
g(ci )∆xi
!
i=1
b
Z
n X
!
+ B lim
||∆||→0
b
Z
g(x)dx.) a
n X i=1
g(ci )∆xi
248
CHAPTER 5. THE DEFINITE INTEGRAL
3. Prove Theorem 5.2.4. (Hint: [a, b] = [a, c] ∪ [c, b]. If P = {a = x0 < x1 < . . . < xn = b} is a partition of [a, b], then for some i, P1 = {a = x0 < . . . < xi−1 < c < xi < . . . < xn = b} yields a partition of [a, b]; {a < x0 < · · · < xi−1 < c} is a partition of [a, c] and {c < xi < · · · < xn = b} is a partition of [c, b]. The addition of c to the partition does not increase ||∆||.) 4. Prove Theorem 5.2.5. (Hint: For each partition P and selection C we have n X
f (ci )(xi − xi−1 ) ≤
i=1
n X
g(ci )(xi − xi−1 ).)
i=1
5. Prove that if f is continuous on [a, b] and f (x) > 0 for each x ∈ [a, b], then Z b f (x) dx > 0. a
(Hint: There is some c in [a, b] such that f (c) is the absolute minimum of f on [a, b] and f (c) > 0. Then argue that 0 < f (c)(b − a) ≤ L(P ) ≤ U (P ) for each partition P .) 6. Prove that if f and g are continuous on [a, b], f (x) > g(x) for all x in [a, b], then Z b Z b f (x) dx > g(x) dx. a
a
(Hint: By problem 5, b
Z
(f (x) − g(x)) dx > 0. a
Use the linearity property to prove the statement.) 7. Prove that if f is continuous on [a, b], then
Z b
Z b
≤
|f (x)|dx. f (x) dx
a
a
5.6. THE RIEMANN INTEGRAL
249
(Hint: Recall that −|f (x)| ≤ f (x) ≤ |f (x)| for all x ∈ [a, b]. Use problem 5 to conclude the result.) 8. Prove the Mean Value Theorem, Theorem 5.2.6. (Hint: Let m = absolute minimum of f on [a, b]; M = absolute minimum of f on [a, b]; Z b 1 f (x) dx; fav [a, b] = b−a a Z b m(b − a) ≤ f (x)dx ≤ M (b − a). a
Then m ≤ fav [a, b] ≤ M . By the intermediate value theorem for continuous functions, there exists some c on [a, b] such that f (c) = fav [a, b].) 9. Prove the Fundamental Theorem of Calculus, First Form, Theorem 5.2.6. (Hint: g 0 (x) = lim
h→0
= lim
h→0
= lim
h→0
= lim
h→0
= lim
h→0
g(x + h) − g(x) h Z x+h Z x 1 f (t)dt − f (t)dt h a a Z x Z x+h Z x 1 f (t) dx + f (t)dt − f (t)dt h a x a Z x+h 1 f (t)dt h x f (c), (for some c, x ≤ c ≤ x + h; )
= f (x) where x ≤ c ≤ x + h, by Theorem 5.2.6.) 10. Prove the Leibniz Rule, Theorem 5.2.8. (Hint: Z
β(x)
f (t)dt = α(x)
β(x)
Z
f (t)dt − a
α(x)
Z
f (t)dt a
for some a. Now use the chain rule of differentiation.)
250
CHAPTER 5. THE DEFINITE INTEGRAL
11. Prove that if f and g are continuous on [a, b] and g is nonnegative, then there is a number c in (a, b) for which Z b Z b f (x)g(x) dx = f (c) g(x) dx. a
a
(Hint: If m and M are the absolute minimum and absolute maximum of f on [a, b], then mg(x) ≤ f (x)g(x) ≤ M g(x). By the Order Property, Z b Z b Z b m g(x) dx ≤ f (x)g(x) ≤ M g(x) dx a a a Rb Z b f (x)g(x) dx a m ≤ Rb ≤M if g(x) dx 6= 0 . g(x) dx 0 a By the Intermediate Value Theorem, there is some c such that Rb f (x)g(x) dx f (x) = a R b or g(x) dx a Z b Z b f (x)g(x) dx = f (c) g(x) dx. a
If
a
b
Z
g(x) dx = 0, then g(x) 6≡ 0 on [a, b] and all integrals are zero.) a
Remark 20 The number f (c) is called the weighted average of f on [a, b] with respect to the weight function g.
5.7
Volumes of Revolution
One simple application of the Riemann integral is to define the volume of a solid. Theorem 5.7.1 Suppose that a solid is bounded by the planes with equations x = a and x = b. Let the cross-sectional area perpendicular to the x-axis at x be given by a continuous function A(x). Then the volume V of the solid is given by Z b
V =
A(x) dx.
a
5.7. VOLUMES OF REVOLUTION
251
Proof. Let P = {a = x0 < x1 < x2 < · · · < xn = b} be a partition of [a, b]. For each i = 1, 2, 3, · · · , n, let Vi = volume of the solid between the planes with equations x = xi−1 and x = xi , mi = absolute minimum of A(x) on [xi−1 , xi ], Mi = absolute maximum of A(x) on [xi−1 , xi ], ∆xi = xi − xi−1 . Then Vi ≤ Mi . mi ∆xi ≤ Vi ≤ Mi ∆xi , mi ≤ ∆xi Since A(x) is continuous, there exists some ci such that xi−1 ≤ ci ≤ Mi and Vi ≤ Mi ∆xi Vi = A(ci )∆xi n X V = A(ci )∆xi .
mi ≤ A(ci ) =
i=1
It follows that for each partition P of [a, b] there exists a Riemann sum that equals the volume. Hence, by definition, Z b V = A(x) dx. a
Theorem 5.7.2 Let f be a function that is continuous on [a, b]. Let R denote the region bounded by the curves x = a, x = b, y = 0 and y = f (x). Then the volume V obtained by rotating R about the x-axis is given by Z b V = π(f (x))2 dx. a
Proof. Clearly, the volume of the rotated solid is between the planes with equations x = a and x = b. The cross-sectional area at x is the circle generated by the line segment joining (x, 0) and (x, f (x)) and has area A(x) = π(f (x))2 . Since f is continuous, A(x) is a continuous function of x. Then by Theorem 5.7.1, the volume V is given by Z b V = π(f (x))2 dx. a
252
CHAPTER 5. THE DEFINITE INTEGRAL
Theorem 5.7.3 Let f and R be defined as in Theorem 5.7.2. Assume that f (x) > 0 for all x ∈ [a, b], either a ≥ 0 or b ≤ 0, so that [a, b] does not contain 0. Then the volume V generated by rotating the region R about the y-axis is given by Z b V = (2πxf (x)) dx. a
Proof. The line segment joining (x, 0) and (x, f (x)) generates a cylinder whose area is A(x) = 2πxf (x). We can see this if we cut the cylinder vertically at (−x, 0) and flattening it out. By Theorem 5.7.1, we get V =
b
Z
2πxf (x) dx. a
Theorem 5.7.4 Let f and g be continuous on [a, b] and suppose that f (x) > g(x) > 0 for all x on [a, b]. Let R be the region bounded by the curves x = a, x = b, y = f (x) and y = g(x). (i) The volume generated by rotating R about the x-axis is given by b
Z
π[(f (x))2 − (g(x))2 ] dx. a
(ii) If we assume R does not cross the y-axis, then the volume generated by rotating R about the y-axis is given by V =
b
Z
2πx[f (x) − g(x)]dx. a
(iii) If, in part (ii), R does not cross the line x = c, then the volume generated by rotating R about the line x = c is given by V =
b
Z
2π|c − x|[f (x) − g(x)]dx. a
Proof. We leave the proof as an exercise.
5.7. VOLUMES OF REVOLUTION
253
Remark 21 There are other various horizontal or vertical axes of rotation that can be considered. The basic principles given in these theorems can be used. Rotations about oblique lines will be considered later. Example 5.7.1 Suppose that a pyramid is 16 units tall and has a square base with edge length of 5 units. Find the volume of V of the pyramid.
graph
We let the y-axis go through the center of the pyramid and perpendicular to the base. At height y, let the cross-sectional area perpendicular to the y-axis be A(y). If s(y) is the side of the square A(y), then using similar triangles, we get 16 − y 5 s(y) = , s(y) = (16 − y) 5 16 16 25 A(y) = (16 − y)2 . 256 Then the volume of the pyramid is given by Z 16 Z 16 25 A(y)dy = (16 − y)2 dy 256 0 0 16 25 (16 − y)3 = 256 −3 0 25 (16)3 (25)(16) = = 256 3 3 400 = cubic units. 3 1 Check : V = (base side)2 · height 3 1 = (25) · 16 3 400 = . 3
254
CHAPTER 5. THE DEFINITE INTEGRAL
Example 5.7.2 Consider the region R bounded by y = sin x, y = 0, x = 0 and x = π. Find the volume generated when R rotated about (i) x-axis (v) x = π
(ii) y-axis (vi) x = 2π.
(iii) y = −2
(iv) y = 1
(i) By Theorem 5.7.2, the volume V is given by Z π V = π sin2 x dx 0 π 1 (x − sin x cos x) =π· 2 0 2 π = . 2
graph
(ii) By Theorem 5.7.3, the volume V is given by (integrating by parts) Z π V = 2πx sin x dx ; (u = x, dv = sin x dx) 0
= 2π[−x cos x + sin x]π0 = 2π[π] = 2π 2 .
graph
5.7. VOLUMES OF REVOLUTION
255
(iii) In this case, the volume V is given by
V = =
π
Z
π(sin x + 2)2 dx
Z0 π
π[sin2 x + 4 sin x + 4] dx
0
1 =π (x − sin x cos x) − 4 cos x + 4x 2 1 =π π + 8 + 4π 2 9 = π 2 + 8π. 2
graph
(iv) In this case,
V =
π
Z
π[12 − (1 − sin x)2 ] dx. 0
graph
π 0
256
CHAPTER 5. THE DEFINITE INTEGRAL
V =
π
Z
π[1 − 1 + 2 sin x − sin2 x]dx 0
π 1 = π −2 cos x − (x − sin x cos x) 2 0 1 = π 4 − (π) 2 π(8 − π) = . 2 (v) π
Z
(2π(π − x) sin x] dx Z π = 2π [π sin x − x sin x] dx
V =
0
0
= 2π[−π cos x + x cos x − sin x]π0 = 2π[2π − π] = 2π 2 .
graph
(vi) V =
π
Z
2π(2π − x) sin x dx 0
= 2π[−2π cos x + x cos x − sin x]π0 = 2π[4π − π] = 6π 2 .
5.7. VOLUMES OF REVOLUTION
257
graph
Example 5.7.3 Consider the region R bounded by the circle (x − 4)2 + y 2 = 4. Compute the volume V generated when R is rotated around (i) y = 0
(ii) x = 0
(iii) x = 2
graph
(i) Since the area crosses the x-axis, it is sufficient to rotate the top half to get the required solid. Z 6 Z 6 2 V = πy dx = π [4 − (x − 4)2 ] dx 2 2 6 1 8 8 32 3 = π 4x − (x − 4) = π 16 − − = π. 3 3 3 3 2 This is the volume of a sphere of radius 2. (ii) In this case, Z 6 Z V = 2πx(2y) dx = 4π 2
6 2
p x[ 4 − (x − 4)2 ]dx ; x − 4 = 2 sin t dx = 2 cos tdt
= 4π
π/2
Z
(4 + 2 sin t)(2 cos t)(2 cos t)dt
−π/2
= 4π
Z
π/2
(16 cos2 t + 8 cos2 t sin t) dx
−π/2
π/2 1 8 3 = 4π 16 · (t + sin t cos t) − cos t 2 3 −π/2 = 4π[8(π)] = 32π 2
258
CHAPTER 5. THE DEFINITE INTEGRAL
(iii) In this case, 6
Z
2π(x − 2)2y dx Z 6 p = 4π (x − 2) 4 − (x − 4)2 dx ; x − 4 = 2 sin t
V =
2
2
dx = 2 cos tdt = 4π
π/2
Z
(2 + 2 sin t)(2 cos t)(2 cos t)dt
−π/2
= 4π
Z
π/2
(8 cos2 t + 8 cos2 t sin t)dt
−π/2
π/2 8 3 = 4π 4(t + sin t cos t) − cos t 3 −π/2 = 4π[4π] = 16π 2 Exercises 5.7 1. Consider the region R bounded by y = x and y = x2 . Find the volume generated when R is rotated around the line with equation (i) x = 0 (v) x = 4
(ii) y = 0 (vi) x = −1
(iii) y = 1 (vii) y = −1
(iv) x = 1 (viii) y = 2
2. Consider the region R bounded by y = sin x, y = cos x, x = 0, x = π . Find the volume generated when R is rotated about the line with 2 equation (i) x = 0
(ii) y = 0
(iii) y = 1
(iv) x =
π 2
3. Consider the region R bounded by y = ex , x = 0, x = ln 2, y = 0. Find the volume generated when R is rotated about the line with equation (i) y = 0
(ii) x = 0
(v) y = 2
(iv) x = 2
(iii) x = ln 2
(iv) y = −2
5.7. VOLUMES OF REVOLUTION
259
4. Consider the region R bounded by y = ln x, y = 0, x = 1, x = e. Find the volume generated when R is rotated about the line with equation (i) y = 0
(ii) x = 0
(v) y = 1
(vi) y = −1
(iii) x = 1
(v) x = e
5. Consider the region R bounded by y = cosh x, y = 0, x = −1, x = 1. Find the volume generated when R is rotated about the line with equation (i) y = 0
(ii) x = 2
(v) y = 6
(vi) x = 0
(iii) x = 1
(iv) y = −1
6. Consider the region R bounded by y = x, y = x3 . Find the volume generated when R is rotated about the line with equation (i) y = 0
(ii) x = 0
(v) y = 1
(vi) y = −1
(iii) x = −1
(iv) x = 1
7. Consider the region R bounded by y = x2 , y = 8 − x2 . Find the volume generated when R is rotated about the line with equation (i) y = 0
(ii) x = 0
(v) x = −2
(vi) x = 2
(iii) y = −4
(iv) y = 8
8. Consider the region R bounded by y = sinh x, y = 0, x = 0, x = 2. Find the volume generated when R is rotated about the line with equation (i) y = 0
(ii) x = 0
(v) y = −1
(vi) y = 10
(iii) x = 2
(iv) x = −2
√ 9. Consider the region R bounded by y = x, y = 4, x = 0. Find the volume generated when R is rotated about the line with equation (i) y = 0
(ii) x = 0
(iii) x = 16
(iv) y = 4
10. Compute the volume of a cone with height h and radius r.
260
CHAPTER 5. THE DEFINITE INTEGRAL
5.8
Arc Length and Surface Area
The Riemann integral is useful in computing the length of arcs. Let f and f 0 be continuous on [a, b]. Let C denote the arc C = {(x, f (x)) : a ≤ x ≤ b}. Let P = {a = x0 < x1 < x2 < . . . < xn = b} be a partition of [a, b]. For each i = 1, 2, . . . , n, let
graph
∆xi = xi − xi−1 ∆yi = f (xi ) − f (xi−1 ) p ∆si = (f (xi ) − f (xi−1 ))2 + (xi − xi )2 ||∆|| = max {∆xn }. 1≤i≤n
Then ∆si is the length of the line segment joining the two points (xi−1 , f (xi−1 )) and (xi , f (xi )). Let n X A(P ) = ∆si . i=1
Then A(P ) is called the polygonal approximation of C with respect to the portion P . Definition 5.8.1 Let C = {(x, f (x)) : x ∈ [a, b]} where f and f 0 are continuous on [a, b]. Then the arc length L of the arc C is defined by L = lim Ap = lim ||∆||→0
||∆||→0
n X p
(f (xi ) − f (xi−1 ))2 + (xi − xi−1 )2 .
i=1
Theorem 5.8.1 The arc length L defined in Definition 5.8.1 is given by Z bp L= (f 0 (x))2 + 1 dx. a
5.8. ARC LENGTH AND SURFACE AREA
261
Proof. By the Mean Value Theorem, for each i = 1, 2, . . . , n, f (xi ) â&#x2C6;&#x2019; f (xiâ&#x2C6;&#x2019;1 ) = f 0 (ci )(xi â&#x2C6;&#x2019; xiâ&#x2C6;&#x2019;1 ) for some ci such that xiâ&#x2C6;&#x2019;1 < ci < xi . Therefore, each polynomial approximation Ap is a Riemann Sum of the continuous function p (f 0 (x))2 + 1 n X p A(P ) = (f 0 (ci ))2 + 1 â&#x2C6;&#x2020;xi , i=1
for some ci such that xiâ&#x2C6;&#x2019;1 < ci < xi . By the definition of the Riemann integral, we get Z bp L= (f 0 (x))2 + 1 dx. a
Example 5.8.1 Let C = {(x, cosh x) : 0 â&#x2030;¤ x â&#x2030;¤ 2}. Then the arc length L of C is given by Z 2p L= 1 + sinh2 x dx Z0 2 = cosh x dx 0
= [sinh x]20 = sinh 2. 2 3/2 Example 5.8.2 Let C = x, x : 0 â&#x2030;¤ x â&#x2030;¤ 4 . Then the arc length 3 L of the curve C is given by s 2 Z 4 2 3 1/2 L= 1+ · x dx 3 2 0 Z 4 = (1 + x)1/2 dx 0 4 2 3/2 (1 + x) = 3 0 2 â&#x2C6;&#x161; = [5 5 â&#x2C6;&#x2019; 1]. 3
262
CHAPTER 5. THE DEFINITE INTEGRAL
Definition 5.8.2 Let C be defined as in Definition 5.8.1. (i) The surface area Sx generated by rotating C about the x-axis is given by Sx =
b
Z a
p 2π|f (x)| (f 0 (x))2 + 1 dx.
(ii) The surface area Sy generated by rotating C about the y-axis Sy =
b
Z a
p 2π|x| (f 0 (x))2 + 1 dx.
Example 5.8.3 Let C = {(x, cosh x) : 0 ≤ x ≤ 4}. (i) Then the surface area Sx generated by rotating C around the x-axis is given by Z 4 p Sx = 2π cosh x 1 + sinh2 x dx 0 Z 4 = 2π cosh2 x dx 0 4 1 = 2π (x + sinh x cosh x) 2 0 = π[4 + sinh 4 cosh 4]. (ii) The surface area Sy generated by rotating the curve C about the y-axis is given by Z 4 p Sy = 2πx 1 + sinh2 x dx 0 Z 4 = 2π x cosh x dx ; (u = x, dv = cosh x dx) 0
= 2π[x sinh x − cosh x]40 = 2π[4 sinh 4 − cosh 4 + 1]
5.8. ARC LENGTH AND SURFACE AREA
263
Theorem 5.8.2 Let C = {(x(t), y(t)) : a ≤ t ≤ b}. Suppose that x0 (t) and y 0 (t) are continuous on [a, b]. (i) The arc length L of C is given by Z bp L= (x0 (t))2 + (y 0 (t))2 dt. a
(ii) The surface area Sx generated by rotating C about the x-axis is given by Sx =
b
Z
p 2π|y(t)| (x0 (t))2 + (y 0 (t))2 dt.
a
(iii) The surface area Sy generated by rotating C about the y-axis is given by Sy =
b
Z a
p 2π|x(t)| (x0 (t))2 + (y 0 (t))2 dt.
Proof. The proof of this theorem is left as an exercise. n πo t t Example 5.8.4 Let C = (e sin t, e cos t) : 0 ≤ t ≤ . Then 2 p ds = (x0 (t))2 + (y 0 (t))2 dt p = (et (sin t + cos t))2 + (et (cos t − sin t))2 dt
= {e2t (sin2 t + cos2 t + 2 sin t cos t + cos2 t + sin2 t − 2 cos t sin t)}1/2 dt √ = et 2 dt.
(i) The arc length L of C is given by L=
Z 0
π/2
√ t 2e dt
√ π/2 = 2 et 0 √ = 2 eπ/2 − 1 .
264
CHAPTER 5. THE DEFINITE INTEGRAL
(ii) The surface area Sx obtained by rotating C about the x-axis is given by Z π/2 √ Sx = 2π(et cos t)( 2et dt) 0 √ Z π/2 2t = 2 2π e cos tdt 0
π/2 2t √ e = 2 2π (2 cos t + sin t) 5 0 π √ 2 e = 2 2π (1) − 5 5 √ 2 2π π = (e − 2). 5 (iii) The surface area Sy obtained by rotating C about the y-axis is given by Z π/2 √ Sy = 2π(et sin t)( 2et dt) 0 √ Z π/2 2t = 2 2π e sin tdt 0
2t π/2 √ e = 2 2π [2 sin t − cos t] 5 √ 0 π √ 1 2 2π 2e = 2 2π + = (2eπ + 1). 5 5 5 Exercises 5.8 Find the arc lengths of the following curves: 1. y = x3/2 , 0 ≤ x ≤ 4 1 2 (x + 2)3/2 , 0 ≤ x ≤ 1 3 n πo 3. C = (4(cos t + t sin t), 4(sin t − t cos t)) : 0 ≤ t ≤ 2 2. y =
4. x(t) = a(cos t + t sin t), y(t) = a(sin t − t cos t), 0 ≤ t ≤ 5. x(t) = cos3 t, y(t) = sin3 t, 0 ≤ t ≤ π/2
π 2
5.8. ARC LENGTH AND SURFACE AREA 6. y =
265
1 2 x , 0≤t≤1 2
7. x(t) = t3 , y(t) = t2 , 0 ≤ t ≤ 1 8. x(t) = 1 − cos t, y(t) = t − sin t, 0 ≤ t ≤ 2π 9. In each of the curves in exercises 1-8, set up the integral that represents the surface area generated when the given curve is rotated about (a) the x-axis (b) the y-axis 10. Let C = {(x, cosh x) : −1 ≤ x ≤ 1} (a) Find the length of C. (b) Find the surface area when C is rotated around the x-axis. (c) Find the surface area when C is rotated around the y-axis. In exercises 11–20, consider the given curve C and the numbers a and b. Determine the integral that represents: (a) Arc length of C (b) Surface area when C is rotated around the x-axis. (c) Surface area when C is rotated around the y-axis. (d) Surface area when C is rotated around the line x = a. (e) Surface area when C is rotated around the line y = b. 11. C = {(x, sin x) : 0 ≤ x ≤ π}; a = π, b = 1 n πo ; a = π, b = 2 12. C = (x, cos x) : 0 ≤ x ≤ 3 13. C = {(t, ln t) : 1 ≤ t ≤ e}; a = 4, b = 3 14. C = {(2 + cos t, sin t) : 0 ≤ t ≤ π}; a = 4, b = −2 n πo ; a = π, b = −3 15. C = (t, ln sec t) : 0 ≤ t ≤ 3 16. C = {(2x, cosh 2x) : 0 ≤ x ≤ 1}; a = −2, b =
1 2
266
CHAPTER 5. THE DEFINITE INTEGRAL
n π πo 17. C = (cos t, 3 + sin t) : − ≤ t ≤ ; a = 2, b = 5 2 2 n πo 18. C = (et sin 2t, et cos 2t) : 0 ≤ t ≤ ; a = −1, b = 3 4 19. C = {(e−t , et ) : 0 ≤ t ≤ ln 2}; a = −1, b = −4 20. C = {(4−t , 4t ) : 0 ≤ t ≤ 1}; a = −2, b = −3
Chapter 6 Techniques of Integration 6.1
Integration by formulae
There exist many books that contain extensive lists of integration, differentiation and other mathematical formulae. For our purpose we will use the list given below. 1.
Z
2.
Z
3.
Z
un du =
4.
Z
u−1 du = ln |u| + C
5.
Z
eau du =
e6au +C a
6.
Z
abu du =
abu + C, a > 0, a 6= 1 b ln a
7.
Z
ln |u|du = u ln |u| − u + C
af (u)du = a n X
Z
!
ai fi (u)
f (u)du
du =
i=1
n Z X
ai fi (u)du
i=1
un+1 + C, n 6= −1 n+1
267
268
CHAPTER 6. TECHNIQUES OF INTEGRATION
8.
Z
sin(au)du =
− cos(au) +C a
9.
Z
cos(au)du =
sin(au) +C a
10.
Z
tan(au)du =
ln | sec(au)| +C a
11.
Z
cot(au)du =
ln | sin(au)| +C a
12.
Z
sec(au)du =
ln | sec(au) + tan(au)| +C a
13.
Z
csc(au)du =
ln | csc(au) − cot(au)| +C a
14.
Z
sinh(au)du =
cosh(au) +C a
15.
Z
cosh(au)du =
sinh(au) +C a
16.
Z
tanh(au)du =
ln | cosh(au)| +C a
17.
Z
coth(au)du =
ln | sinh(au)| +C a
18.
Z
sech (au)du =
2 arctan(eau ) + C a
19.
Z
csch (au) du =
20.
Z
sin2 (au)du =
u sin(au) cos(au) − +C 2 2a
21.
Z
cos2 (au)du =
u sin(au) cos(au) + +C 2 2a
22.
Z
tan2 (au)du =
tan(au) −u+C a
2 arctanh (eau ) + C a
6.1. INTEGRATION BY FORMULAE 23.
Z
cot2 (au)du = −
24.
Z
sec2 (au)du =
25.
Z
csc2 (au)du = −
26.
Z
u sinh(2au) sinh2 (au)du = − + +C 2 4a
27.
Z
cosh2 (au)du =
28.
Z
tanh2 (au)du = u −
tanh(au) +C a
29.
Z
coth2 (au)du = u −
coth(au) +C a
30.
Z
sech 2 (au)du =
tanh(au) +C a
31.
Z
csch 2 (au)du =
− coth(au) +C a
32.
Z
sec(au) tan(au)du =
33.
Z
csc(au) cot(au)du = −
34.
Z
sech (au) tanh(au)du = −
35.
Z
csch (au) coth(au)du = −
Z
cot(au) −u+C a
tan(au) +C a cot(au) +C a
u sinh(2au) + +C 2 4a
sec(au) +C a csc(au) +C a sech (au) +C a
csch (au) +C a
u du 1 = arctan +C a2 + u2 a a
Z u
a + u
du 1 1
+C 37. = arctanh +C = ln
a2 − u2 a a 2a a − u
36.
269
270
CHAPTER 6. TECHNIQUES OF INTEGRATION
38.
Z
39.
Z
40.
Z
41.
Z
42.
Z
43.
Z
u du √ +C = arcsinh a a2 + u2 u du √ = arcsin + C, |a| > |u| a a2 − u2 u du √ = arccosh + C, |u| > |a| a u2 − a2 u du 1 √ = arcsec + C, |u| > |a| a a u u2 − a2 u du 1 √ = − arcsech + C, |a| > |u| a a u a2 − u2 u du 1 √ +C = − arccsch a a u a2 + u2
√ u du √ = a2 + u2 + C a2 + u2 Z √ u du 45. = − ln a2 − u2 + C, |a| > |u| a2 − u2 Z √ u du √ 46. = a2 + u2 + C a2 + u2 Z √ u du √ = − a2 − u2 + C, |a| > |u| 47. a2 − u2 Z √ u du √ 48. = u2 − a2 + C, |u| > |a| u2 − a2 Z 1 √ 49. arcsin(au)du = u arcsin(au) + 1 − a2 u2 + C, |a||u| < 1 a Z 1 √ 50. arccos(au)du = u arccos(au) − 1 − a2 u2 + C, |a||u| < 1 a Z 1 51. arctan(au)du = u arctan(au) − ln(1 + a2 u2 ) + C 2a Z 1 52. arccot (au)du = uarccot (au) + ln(1 + a2 u2 ) + C 2a 44.
Z
6.1. INTEGRATION BY FORMULAE
271
√ 1
ln au + a2 u2 − 1 + C, au > 1 a Z
√ 1
2 2 54. arccsc (au)du = uarccsc (au) + ln au + a u − 1 + C, au > 1 a Z 1 √ 55. arcsinh (au)du = uarcsinh (au) − 1 + a2 u2 + C a Z 1 √ 56. arccosh (au)du = uarccosh (au) − −1 + a2 u2 + C, |a||u| > 1 a Z 1 57. arctanh (au)du = uarctanh (au) + ln(−1 + a2 u2 ) + C, |a||u| = 6 1 2a Z 1 58. arccoth (au)du = uarccoth (au) + ln(−1 + a2 u2 ) + C, |a||u| = 6 1 2a Z 1 59. arcsech (au)du = uarcsech (au) + arcsin(au) + C, |a||u| < 1 a Z
√ 1
2 2 60. arccsch (au)du = uarccsch (au) + ln au + a u + 1 + C a Z eau [a sin(bu) − b cos(bu)] 61. eau sin(bu)du = +C a2 + b2 Z eau [a cos(bu) + b sin(bu)] 62. eau cos(bu)du = +C a2 + b2 Z Z n−1 −1 n−1 n sin (u) cos(u) + sinn−2 (u)du 63. sin (u)du = n n Z Z n−1 1 n−1 n cos (u) sin(u) + cosn−2 (u)du 64. cos (u)du = n n Z Z tann−1 (u) n − tann−2 (u)du 65. tan (u)du = n−1 Z Z cotn−1 (u) n − cotn−2 (u)du 66. cot (u)du = − n−1 Z Z n−2 1 n−2 n sec (u) tan(u) + secn−2 (u)du 67. sec (u)du = n−1 n−1 53.
Z
arcsec (au)du = uarcsec (au) −
272
CHAPTER 6. TECHNIQUES OF INTEGRATION
68.
Z
n−2 −1 n−2 csc (u)du = csc (u) cot(u) + n−1 n−1
69.
Z
sin(mu)sin(nu)du =
sin[(m − n)u] sin[(m + n)u] − + C, m2 6= n2 2(m − n) 2(m + n)
70.
Z
cos(mu) cos(nu)du =
sin[(m − n)u] sin[(m + n)u] + + C, m2 6= n2 2(m − n) 2(m + n)
71.
Z
sin(mu) cos(nu)du =
cos[(m − n)u] cos[(m + n)u] − + C, m2 6= n2 2(m − n) 2(m + n)
n
Z
cscn−2 (u)du
Exercises 6.1 1. Define the statement that g(x) is an antiderivative of f (x) on the closed interval [a, b] 2. Prove that if g(x) and h(x) are any two antiderivatives of f (x) on [a, b], then there exists some constant C such that g(x) = ln(x) + C for all x on [a, b]. In problems 3–30, evaluate each of the indefinite integrals. Z Z Z 4 5 3. x dx 4. dx 5. x−3/5 dx x3 Z Z Z √ 2 2/3 √ dx 6. 3x dx 7. 8. t2 t dt x Z Z Z 2 2 −1/2 3/2 dt 10. (1 + x ) dx 11. t2 (1 + t)2 dt 9. t +t 12.
Z
15.
Z
18.
Z
2
2
(1 + t )(1 − t )dt 13. 2
3 sec t dt
2 csc t cot t dt
Z
1 t1/2
+ sin t dt
16.
Z
2 csc x dx
19.
Z
sec t(sec t + tan t)dt
2
14.
Z
(2 sin t + 3 cos t)dt
17.
Z
4 sec t tan t dt
6.2. INTEGRATION BY SUBSTITUTION
20.
Z
csc t(csc t − cot t)dt
22.
Z
cos x dx sin2 x
25.
Z
tan t dt
28.
Z
2 dt t
2
23.
Z
26.
Z
29.
Z
sin3 t − 3 dt sin2 t 2
cot t dt
sinh t dt
273
21.
Z
sin x dx cos2 x
24.
Z
cos3 t + 2 dt cos2 t
27.
Z
(2 sec2 t + 1)dt
30.
Z
cosh t dt
31. Determine f (x) if f 0 (x) = cos x and f (0) = 2. 32. Determine f (x) if f 00 (x) = sin x and f (0) = 1, f 0 (0) = 2. 33. Determine f (x) if f 00 (x) = sinh x and f (0) = 2, f 0 (0) = −3. 34. Prove each of the integration formulas 1–77.
6.2
Integration by Substitution
Theorem 6.2.1 Let f (x), g(x), f (g(x)) and g 0 (x) be continuous on an interval [a, b]. Suppose that F 0 (u) = f (u) where u = g(x). Then Z Z 0 (i) f (g(x))g (x)dx = f (u)du = F (g(x)) + C
(ii)
b
Z
0
f (g(x))g (x)dx = a
Z
u=g(b)
f (u)du = F (g(b)) − F (g(a)). u=g(u)
Proof. See the proof of Theorem 5.3.1.
Exercises 6.2 In problems 1–39, evaluate the integral by making the given substitution.
274
CHAPTER 6. TECHNIQUES OF INTEGRATION
1.
Z
3x(x + 1) dx, u = x + 1
3.
Z
√ √ cos( t) √ dt, x = t t
5.
Z
2earcsin x √ dx, u = arcsin x 1 − x2
7.
Z
x 4 dx, u = 4
9.
Z
4arctan x dx, u = 4arctan x 1 + x2
11.
Z
13.
Z
15.
Z
17.
Z
19.
Z
21.
Z
23.
Z
25.
Z
2
10
2
x2
x2
5arcsec x √ dx, u = arcsec x x x2 − 1 5
2
(cot 3x) csc 3x dx, u = cot 3x 5
cos x sin x dx, u = cos x 3
sin x dx, u = cos x 3
tan x dx, u = tan x 4
sec x dx, u = tan x 3
3
sin x cos x dx, u = sin x 4
tan x dx, u = tan x
2.
Z
x sin(1 + x2 )dx, u = 1 + x2
4.
Z
3x2 dx, u = 1 + x3 (1 + x3 )3/2
6.
Z
3earccos x √ dx 1 − x2
8.
Z
10sin x cos x dx, u = sin x
10.
Z
(1 + ln x)10 dx, u = 1 + ln x x
12.
Z
(tan 2x)3 sec2 2x dx, u = tan 2x
14.
Z
sin21 x cos x dx, u = sin x
16.
Z
(1 + sin x)10 cos x dx, u = 1 + sin x
18.
Z
cos3 x dx, u = sin x
20.
Z
cot3 x dx, u = cot x
22.
Z
csc4 x dx, u = cot x
24.
Z
sin3 x cos3 x dx, u = cos x
26.
Z
sin(ln x) dx, u = ln x x
6.2. INTEGRATION BY SUBSTITUTION
275
x cos(ln(1 + x2 )) dx, u = ln(1 + x)2 28. 1 + x2
27.
Z
29.
Z
cot x csc x dx, u = csc x
31.
Z
dx √ , x = 3 cos t 9 − x2
33.
Z
dx √ , x = 3 cosh t x2 − 9
35.
Z
dx , x = 2 tanh t 4 − x2
37.
Z
39.
Z
3
4e
4
sin(3x)
3e
tan 2x
cos(3x)dx, u = sin 3x 2
sec x dx, u = tan 2x
Evaluate the following definite integrals. Z 1 41. (x + 1)30 dx
Z
tan3 x sec4 x dx, u = sec x
30.
Z
dx √ , x = 2 sin t 4 − x2
32.
Z
dx √ , x = 2 sinh t 4 + x2
34.
Z
dx , x = 2 tan t 4 + x2
36.
Z
dx √ , x = 2 sec t x x2 − 4
38.
Z
x 3(x
40.
Z
√ x x + 2 dx, u = x + 2
2
42.
Z
0
43.
Z
45.
π/4 3
2
tan x sec x dx
44.
10
(x + 1)(x − 2) dx
49.
46.
51.
π/6
sin(3x)dx
x2 (1 + x)1/2 dx
48.
Z
π/4
cos(2x)dx
0 π/4 3
sin 2x cos 2x dx
50.
π/6
Z
cos4 3x sin 3x dx
0 1
0
8 0
0
Z
x3 (x2 + 1)3 dx
Z
0
Z
1
Z
0
47.
x(4 − x2 )1/2 dx
0 2
Z
dx, u = 3x
1
0
Z
2 +4)
earctan x dx 1 + x2
52.
Z 0
1/2
earcsin x √ dx 1 − x2
2 +4
276
53.
CHAPTER 6. TECHNIQUES OF INTEGRATION
3
Z 2
6.3
earcsec x √ dx x x2 − 1
1
Z
54.
0
dx √ 1 + x2
Integration by Parts
Theorem 6.3.1 Let f (x), g(x), f 0 (x) and g 0 (x) be continuous on an interval [a, b]. Then Z Z 0 (i) f (x)g (x)dx = f (x)g(x) − g(x)f 0 (x)dx
(ii)
Z
(iii)
Z
b 0
f (x)g (x)dx = (f (b)g(b) − f (a)g(a)) −
b
Z
a
g(x)f 0 (x)dx a
udv = uv −
Z
vdu
where u = f (x) and dv = g 0 (x)dx are the parts of the integrand. Proof. See the proof of Theorem 5.4.1.
Exercises 6.3 Evaluate each of the following integrals. Z Z 1. x sin x dx 2. x cos x dx 3.
Z
5.
Z
7.
Z
9.
Z
x ln x dx x
x 4 dx 2
x sin x dx 2 x
x e dx
4.
Z
x ex dx
6.
Z
x2 ln x dx
8.
Z
x2 cos x dx
10.
Z
x2 10x dx
6.3. INTEGRATION BY PARTS
277
11.
Z
ex sin x dx (Let u = ex twice and solve.)
12.
Z
ex cos x dx (Let u = ex twice and solve.)
13.
Z
e2x sin 3x dx (Let u = e2x twice and solve.)
14.
Z
16.
Z
18.
Z
20.
Z
22.
Z
24.
Z
26.
Z
28.
Z
30.
Z
arccos x dx
32.
Z
arcsec x dx
x sin(3x)dx 2 4x
x e dx 2
x sec x dx
x sinh(4x)dx
x cos(5x)dx
cos(ln x)dx
x arccos x dx
x arcsec x dx
15.
Z
x2 cos(2x)dx
17.
Z
x3 ln(2x)dx
19.
Z
x csc2 x dx
21.
Z
x2 cosh x dx
23.
Z
sin(ln x)dx
25.
Z
x arcsin x dx
27.
Z
x arctan x dx
29.
Z
arcsin x dx
31.
Z
arctan x dx
Verify the following integration formulas:
278 33.
CHAPTER 6. TECHNIQUES OF INTEGRATION Z
sinn−1 (ax) cos(ax) n − 1 sin (ax)dx = − + na n n
Z
1 n−1 34. cos (ax)dx = cosn−1 (ax) sin(ax) + na n Z Z 35. xn ex dx = xn ex − n xn−1 ex dx Z
n
36.
Z
37.
Z
x cos x dx = x sin x − n
38.
Z
eax sin(bx)dx =
39.
Z
eax cos(bx) dx =
Z
xn ln x dx =
n
n
x sin x dx = −x cos x + n n
n
Z
Z
(sinn−2 ax)dx Z
(cosn−2 ax)dx
xn−1 cos x dx
xn−1 sin x dx
1 eax [a sin(bx) − b cos(bx)] + C a2 + b2 a2
1 eax [a cos(bx) + b sin(bx)] + C 2 +b
1 1 xn+1 ln x − xn+1 + C, n 6= −1, x > 0 n+1 (n + 1)2 Z Z n−2 1 n n−2 41. sec x dx = sec x tan x + secn−2 x dx, n 6= 1, n > 0 n−1 n−1 Z Z n−2 −1 n n−2 42. csc x dx = csc x cot x + cscn−2 x dx, n 6= 1, n > 0 n−1 n−1 40.
Use the formulas 33–42 to evaluate the following integrals: Z Z 4 43. sin x dx 44. cos5 x dx 45.
Z
47.
Z
49.
Z
3 x
x e dx 3
x cos x dx 3x
e cos 2x dx
46.
Z
x4 sin x dx
48.
Z
e2x sin 3x dx
50.
Z
x5 ln x dx
6.3. INTEGRATION BY PARTS
51.
Z
3
sec x dx
279
52.
Z
csc3 x dx
Prove each of the following formulas: 53.
Z
1 tan x dx = tann−1 x − n−1 n
Z
n
56.
Z
2n+1
57.
Z
58.
Z
59.
Z
60.
Z
61.
Z
cot x csc
62.
Z
2n+1
63.
Z
cot
64.
Z
1 sin mx cos nx dx = − 2
Z
tann−2 x dx, n 6= 1
Z 1 n−1 54. cot x dx = cot x − cotn−2 x dx, n 6= 1 n−1 Z Z 2n+1 55. sin x dx = − (1 − u2 )n du, u = cos x x dx = −
cos
2n+1
sin
cos
m
m
x sin x dx =
2n
2m
n
2m
n
2m
sin x cos tan x sec
2n+1
(1 − u2 )n du, u = sin x
x cos x dx = −
2n+1
tan
Z
Z
Z
(1 − u2 )n um du, u = cos x
(1 − u2 )n um du, u = sin x
x dx =
Z
(sin x)2n (1 − sin2 x)m dx
x dx =
Z
un (1 + u2 )m−1 du, u = tan x
x dx = −
Z
un (1 + u2 )m−1 du, u = cot x
m
Z
(u2 − 1)n um−1 du, u = sec x
x sec x dx = m
x csc x dx = −
Z
(u2 − 1)n um−1 du, u = csc x
cos(m + n)x cos(m − n)x + + C; m2 6= n2 m+n m−n
280
CHAPTER 6. TECHNIQUES OF INTEGRATION
1 sin(m − n)x sin(m + n)x 65. sin mx sin nx dx = − + C; m2 6= n2 2 m−n m+n Z 1 sin(m − n)x sin(m + n)x 66. cos mx cos nx dx = + + C; m2 6= n2 2 m−n m+n Z
6.4
Trigonometric Integrals
The trigonometric integrals are of two types. The integrand of the first type consists of a product of powers of trigonometric functions of x. The integrand of the second type consists of sin(nx) cos(mx), sin(nx) sin(mx) or cos(nx) cos(mx). By expressing all trigonometric functions in terms of sine and cosine, many trigonometric integrals can be computed by using the following theorem. Theorem 6.4.1 Suppose that m and n are integers, positive, negative, or zero. Then the following reduction formulas are valid:
1.
Z Z
(n − 1) −1 sinn−1 x cos x + sin x dx = n n n
Z
sinn−2 x dx, n > 0
Z 1 n n−1 2. sin x dx = sin x cos x + sinn x dx, n ≤ 0 n−1 n−1 Z Z −1 3. (sin x) dx = csc x dx = ln | csc x−cot x|+c or − ln | csc x+cot x|+c 4.
Z
n−2
1 n−1 cos x dx = cosn−1 x sin x + n n n
Z
cosn−2 x dx, n > 0
Z −1 n n−1 cos x sin x + cosn x dx, n ≤ 0 5. cos x dx = n−1 n−1 Z Z −1 6. (cos x) dx = sec x dx = ln | sec x + tan x| + c Z
7.
Z
n−2
sinn x cos2m+1 x dx = =
R
R
sinn x(1 − sin2 x)m cos x dx un (1 − u2 )m du, u = sin x, du = cos x dx
6.4. TRIGONOMETRIC INTEGRALS 8.
Z
9.
Z
sin2n+1 x cosm x dx =
281
R
cosm x(1 − cos2 x)n sin x dx R = − um (1 − u2 )n du, u = cos x, du = − sin x dx
R sin2n x cos2m x dx = (1 − cos2 x)n cos2m x dx R = (1 − sin2 x)m sin2n x dx
10.
Z
−1 cos(m + n)x cos(m − n)x sin(nx) cos(mx)dx = + + c, m2 6= n2 2 m−n m−n
11.
Z
1 sin(m − n)x sin(m + n)x sin(mx) sin(mx) dx = − + c, m2 6= n2 2 m−n m+n
12.
Z
1 sin(m − n)x sin(m + n)x cos(mx) cos(mx) dx = + + c, m2 6= n2 2 m−n m+n
Corollary. The following integration formulas are valid: 13.
Z
tann−1 u tan u du = − n−1
14.
Z
n−2 1 sec u du = secn−2 x tan x + n−1 n−1
Z
secn−2 x dx
15.
Z
n−2 −1 csc u du = cscn−2 x cot x + n−1 n−1
Z
cscn−2 x dx
n
Z
tann−2 u d
n
n
Exercises 6.4 Evaluate each of the following integrals. Z Z 5 1. sin x dx 2. cos4 x dx 3.
Z
5.
Z
5
tan x dx 5
sec x dx
4.
Z
cot4 x dx
6.
Z
csc4 x dx
282
CHAPTER 6. TECHNIQUES OF INTEGRATION
7.
Z
9.
Z
11.
Z
13.
Z
15.
Z
17.
Z
19.
Z
21.
Z
23.
Z
25.
Z
27.
Z
6.5
5
4
4
3
sin x cos x dx
sin x cos x dx 5
4
4
5
4
4
3
3
tan x sec x dx
tan x sec x dx
tan x sec x dx
tan x sec x dx
sin 2x cos 3x dx
sin 3x cos 3x dx
sin 4x sin 6x dx
cos 3x cos 5x dx
cos 3x cos 4x dx
8.
Z
sin3 x cos5 x dx
10.
Z
sin2 x cos4 x dx
12.
Z
cot5 x csc4 x dx
14.
Z
cot4 x csc5 x dx
16.
Z
cot4 x csc4 x dx
18.
Z
cot3 x csc3 x dx
20.
Z
sin 4x cos 4x dx
22.
Z
sin 2x sin 3x dx
24.
Z
sin 3x sin 5x dx
26.
Z
cos 2x cos 4x dx
28.
Z
sin 4x cos 4x dx
Trigonometric Substitutions
Theorem 6.5.1 (a2 â&#x2C6;&#x2019; u2 Forms). Suppose that u = a sin t, a > 0. Then
6.5. TRIGONOMETRIC SUBSTITUTIONS
283
√ du = a cos tdt, a2 − u2 = a2 cos2 t, a2 − u2 = a cos t, t = arcsin(u/a), √ u a2 − u2 u sin t = , cos t = , tan t = √ , a a a2 − u2 √ a2 − u2 a a cot t = , sec t = √ , csc t . 2 2 u u a −u
graph
The following integration formulas are valid: 1.
Z
2.
Z
u
a − u
1 du 1
+ c = arctanh = ln
+c a2 − u2 2a a + u
a a
3.
Z
√ udu √ = − a2 − u2 + c a2 − u2
4.
Z
u du √ = arcsin +c a a2 − u2
5.
Z
√
2 − u2
a du 1 a
+c √ = ln
−
a u u u a2 − u2
1 udu = − ln |a2 − u2 | + c 2 −u 2
a2
Z √ u 1 √ a2 2 2 6. a − u du = arcsin + u a2 − u2 + c 2 a 2 Proof. The proof of this theorem is left as an exercise.
284
CHAPTER 6. TECHNIQUES OF INTEGRATION
Theorem 6.5.2 (a2 + u2 Forms). Suppose that u = a tan t, a > 0. Then u √ du = a sec2 tdt, a2 + u2 = a2 sec2 t, a2 + u2 = a sec t, t = arctan , a u a u sin t = √ , cos t = √ , tan t = 2 2 2 2 a a +u a +u √ √ 2 2 2 2 a +u a +u a csc t = , sec t = , cot t = . u a u graph
Proof. The proof of this theorem is left as an exercise.
1. 2. 3. 4.
5.
6.
The following integration formulas are valid: Z
2 1 udu
a + u2 + c = ln a2 + u2 2 Z u du 1 = arctan +c a2 + u2 a a Z √ udu √ = a2 + u2 + c a2 + u2 Z
√ du
√ = ln u + a2 + u2 + c 2 2 a +u
√
Z
a2 + u2 a
du 1
√ − +c = ln
2 2
a u u u a +u Z √
√ 1 √ 2 a2
2 2 2 2 2 a + u du = u a + u + ln u + a + u + c 2 2
Theorem 6.5.3 (u2 − a2 Forms) Suppose that u = a sec t, a > 0. Then u √ du = a sec t tan t dt, u2 − a2 = a2 tan2 t, u2 − a2 = a tan t, t = arcsec , a √ √ u2 − a2 a u2 − a2 sin t = , cos t = , tan t = , u u a u u a csc t = √ , sec t = , cot t = √ . a u2 − a2 u2 − a2
6.5. TRIGONOMETRIC SUBSTITUTIONS graph
Proof. The proof of this theorem is left as an exercise.
1. 2. 3. 4. 5. 6.
The following integration formulas are valid: Z
2 udu 1
u − a2 + c = ln u2 − a2 2
Z
u − a
du 1
+c = ln
u2 − a2 2a u + a
Z √ udu √ = u2 − a2 + c u2 − a2 Z
√ du
√ = ln u + u2 − a2 + c 2 2 u −a Z u du 1 √ = arcsec +c a a u u2 − a2 Z √
√ 1 √ 2 a2
2 2 2 2 2 u − a du = u u − a − ln u + u − a + c 2 2
Exercises 6.5 Prove each of the following formulas: Z 1 u du 1. = − ln |a2 − u2 | + C 2 2 a −u 2
Z
a − u
du 1
+C 2. = ln
a2 − u2 2a a + u
Z √ u du √ 3. = − a2 − u2 + C a2 − u2 Z u du √ 4. = arcsin + C, a > 0 a a2 − u2 √
Z 2 − u2
a du 1 a
+C √ 5. = ln
−
a u u u a2 − u2
285
286
CHAPTER 6. TECHNIQUES OF INTEGRATION
Z √ u 1 √ a2 2 2 6. a − u du = arcsin + u a2 − u2 + C, a > 0 2 a 2 Z
2 u du 1
a + u2 + C 7. = ln a2 + u2 2 Z u du 1 8. = arctan +C a2 + u2 a a Z √ u du √ 9. = a2 + u2 + C a2 + u2 Z
√ du
√ 10. = ln u + a2 + u2 + C 2 2 a +u
√
Z
a2 + u2 a
du 1
√ 11. − +C = ln
2 2
a u u u a +u Z √
√ 1 √ 2 a2
2 2 2 2 2 12. a + u du = u a + u + ln u + a + u + C 2 2 Z
2 1 u du
u − a2 + C 13. = ln u2 − a2 2
Z
u − a
du 1
+C 14. = ln
u2 − a2 2a u + a
Z √ u du √ 15. = u2 − a2 + C u2 − a2 Z
√ du
√ 16. = ln u + u2 − a2 + C 2 2 u −a Z u du 1 √ 17. = arcsec +C a a u u2 − a2 Z √
√ 1 √ a2
18. u2 − a2 du = u u2 − a2 − ln u + u2 − a2 + C 2 2 Evaluate each of the following integrals:
6.5. TRIGONOMETRIC SUBSTITUTIONS 19.
Z
x dx √ 4 − x2
22.
Z
dx 4 − x2
25.
Z
x dx √ 9 + x2
28.
Z
dx 2 x − 16
31.
Z
dx √ x x2 − 4
Z √ 34. 9 − x2 dx
37.
Z
x2 √ dx 4 + x2
40.
Z
dx (9 − x2 )2
43.
Z √
46.
Z
dx √ 2 x 4 − x2
49.
Z
dx x2 − 4x + 12
52.
Z
dx 4x − x2
55.
Z
x dx √ x2 − 2x + 5
4 + x2 x
20.
Z
dx √ 4 − x2
23.
Z
x dx 9 + x2
26.
Z
dx √ 9 + x2
29.
Z
x dx √ x2 − 16
32.
Z
dx √ x 9 − x2
Z √ 35. 4 − 9x2
38.
Z
x2 √ dx x2 − 16
41.
Z
dx (x2 − 16)2
44.
47.
50.
53.
56.
Z √ 2 x −4 dx x Z dx √ 2 x x2 − 4 Z dx √ 4x − x2 Z dx √ 2 x − 2x + 5 Z x dx x2 + 4x + 13
287 21.
Z
x dx 4 − x2
24.
Z
dx 9 + x2
27.
Z
x2
30.
Z
dx √ 2 x − 16
33.
Z
dx √ x x2 + 16
36.
Z
x2 √ dx 1 − x2
39.
Z
dx (9 + x2 )2
42.
Z
dx (4 + x2 )3/2
45.
Z
dx √ x2 x2 + 4
48.
Z
51.
Z
54.
Z
x2
57.
Z
(5 − 4x − x2 )1/2 dx
x dx − 16
x2
dx − 2x + 5
dx √ x2 − 4x + 12 x dx − 4x − 12
288
CHAPTER 6. TECHNIQUES OF INTEGRATION
58.
Z
2x + 7 dx x2 + 4 + 13
61.
Z
x+4 √ dx 9x2 + 16
64.
Z
e3x dx (e6x + 4e3x + 3)1/2
6.6
59.
Z
x+3 √ dx x2 + 2x + 5
62.
Z
x+2 √ dx 16 − 9x2
60.
Z
dx √ 4x2 − 1
63.
Z
e2x dx (5 − e2x + e4x )1/2
Integration by Partial Fractions
A polynomial with real coefficients can be factored into a product of powers of linear and quadratic factors. This fact can be used to integrate rational functions of the form P (x)/Q(x) where P (x) and Q(x) are polynomials that have no factors in common. If the degree of P (x) is greater than or equal to the degree of Q(x), then by long division we can express the rational function by r(x) P (x) = q(x) + Q(x) Q(x) where q(x) is the quotient and r(x) is the remainder whose degree is less than the degree of Q(x). Then Q(x) is factored as a product of powers of linear and quadratic factors. Finally r(x)/Q(x) is split into a sum of fractions of the form A2 An A1 + + ··· + 2 ax + b (ax + b) (ax + b)n and
B2 x + c2 Bm x + cm B1 x + c1 + + · · · + . ax2 + bx + c (ax2 + bxc)2 (ax2 + bx + c)m
Many calculators and computer algebra systems, such as Maple or Mathematica, are able to factor polynomials and split rational functions into partial fractions. Once the partial fraction split up is made, the problem of integrating a rational function is reduced to integration by substitution using linear or trigonometric substitutions. It is best to study some examples and do some simple problems by hand.
Exercises 6.6 Evaluate each of the following integrals:
6.7. FRACTIONAL POWER SUBSTITUTIONS 1.
Z
dx (x − 1)(x − 2)(x + 4)
3.
Z
dx (x − a)(x − b)
5.
Z
dx 2 (x + 1)(x2 + 4)
7.
Z
2x dx 2 x − 5x + 6
9.
Z
x+1 dx (x + 2)(x2 + 4)
11.
Z
2 dx 2 (x + 4)(x2 + 9)
13.
Z
x2 dx (x2 + 4)(x2 + 9)
15.
Z
dx 4 x − 16
6.7
289
2.
Z
dx (x − 4)(10 + x)
4.
Z
dx (x − a)(b − x)
6.
Z
dx (x − 1)(x2 + 1)
8.
Z
x dx (x + 3)(x + 4)
10.
Z
(x + 2)dx (x + 3)(x2 + 1)
12.
Z
(x2
dx − 4)(x2 − 9)
14.
Z
(x2
x dx − 4)(x2 − 9)
16.
Z
x4
x dx − 81
Fractional Power Substitutions
If the integrand contains one or more fractional powers of the form xs/r , then the substitution, x = un , where n is the least common multiple of the denominators of the fractional exponents, may be helpful in computing the integral. It is best to look at some examples and work some problems by hand. Exercises 6.7 Evaluate each of the following integrals using the given substitution. Z Z dx 4x3/2 6 dx; x = u 2. ; x = u3 1. 1/3 1+x 1 + x1/3
290 3.
CHAPTER 6. TECHNIQUES OF INTEGRATION Z
dx √ ; u2 = 1 + e2x 2x 1+e
Z
4.
dx √ ; u2 = x3 − 8 3 x x −8
Evaluate each of the following by using an appropriate substitution: Z Z x dx x2 dx √ √ 5. 6. x+2 x+4 Z Z 1 x dx √ dx √ 7. 8. 4+ x 1+ x 9.
Z
√ x √ 1+ 3x
11.
Z
1 dx x2/3 + 1
13.
Z
x dx 1 + x2/3
15.
Z
√ 1− x dx 1 + x3/2
6.8
10.
Z
x2/3 8 + x1/2
12.
Z
dx √ 1+ x
14.
Z
√ 1+ x √ dx 2+ x
16.
Z
√ 1+ x dx 1 − x3/2
Tangent x/2 Substitution
If the integrand contains an expression of the form (a+b sin x) or (a+b cos x), then the following theorem may be helpful in evaluating the integral. Theorem 6.8.1 Suppose that u = tan(x/2). Then sin x =
2u 1 − u2 2 , cos x = and dx = du. 1 + u2 1 + u2 1 + u2
Furthermore, Z Z
dx = a + b sin x
Z
dx = a + b cos x
Z
(2/(1 + u2 ))du = 2u a + b 1+u 2 (2/(1 + u2 ))du = 2 a + b 1−u 2 1+u
Z
2du a(1 + u2 ) + 2bu
Z
2du . a(1 + u2 ) + b(1 − u2 )
6.9. NUMERICAL INTEGRATION
291
Proof. The proof of this theorem is left as an exercise. Exercises 6.8 1. Prove Theorem 6.8.1 Evaluate the following integrals: 2.
Z
dx 2 + sin x
4.
Z
dx sin x − cos x
6.
Z
dx 2 − sin x
8.
Z
dx 3 − cos x
10.
Z
cos x dx sin x − cos x
12.
Z
1 − cos x dx 1 + cos x
14.
Z
2 + cos x dx 2 − sin x
16.
Z
dx 1 + sin x + cos x
6.9
3.
Z
dx sin x + cos x
5.
Z
dx 2 sin x + 3 cos x
7.
Z
dx 3 + cos x
9.
Z
sin x dx sin x + cos x
11.
Z
(1 + sin x)dx (1 − sin x)
13.
Z
2 − cos x dx 2 + cos x
15.
Z
2 − sin x dx 3 + cos x
Numerical Integration
Not all integrals can be computed in the closed form in terms of the elementary functions. It becomes necessary to use approximation methods. Some of the simplest numerical methods of integration are stated in the next few theorems.
292
CHAPTER 6. TECHNIQUES OF INTEGRATION
Theorem 6.9.1 (Midpoint Rule) If f, f 0 and f 00 are continuous on [a, b], then there exists some c such that a < c < b and Z b a+b f 00 (c) f (x)dx = (b − a)f + (b − a)3 . 2 24 a Proof. The proof of this theorem is omitted. Theorem 6.9.2 (Trapezoidal Rule) If f, f 0 and f 00 are continuous on [a, b], then there exists some c such that a < c < b and Z b f 00 (c) 1 (f (a) + f (b)) − (b − a)3 . f (x)dx = (b − a) 2 12 a Proof. The proof of this theorem is omitted. Theorem 6.9.3 (Simpson’s Rule) If f, f 0 , f 00 , f (3) and f (4) are continuous on [a, b], then there exists some c such that a < c < b and Z b a+b f (4) (c) b−a f (x)dx = f (a) + 4f + f (b) − (b − a)5 . 6 2 2880 a These basic numerical formulas can be applied on each subinterval [xi , xi+1 ] of a partition P = {a = x0 < x1 < · · · < xn = b} of the interval [a, b] to get composite numerical methods. We assume that h = (b − a)/n, xi = a + ih, i = 0, 1, 2, · · · , n. Proof. The proof of this theorem is omitted. Theorem 6.9.4 (Composite Trapezoidal Rule) If f, f 0 and f 00 are continuous on [a, b], then there exists some c such that a < c < b and " # Z b n−1 X b − a 2 00 h f (a) + 2 f (xi ) + f (b) − h f (c). f (x)dx = 2 12 a i=1 Proof. The proof of this theorem is omitted. Theorem 6.9.5 (Composite Simpson’s Rule) If f, f 0 , f 00 , f ( 3) and f (4) are continuous on [a, b], then there exists some c such that a < c < b and Z b n/2−1 n/2 X X b − a 4 (4) h f (x2i ) + 4 f (x2i−1 ) + f (b)− h f (c). f (x)dx = f (a) + 2 3 180 a i=1 i=1 where n is an even natural number.
6.9. NUMERICAL INTEGRATION
293
Proof. The proof of this theorem is omitted. Remark 22 In practice, the composite Trapezoidal and Simpson’s rules can be applied when the value of the function is known at the subdivision points xi , i = 0, 1, 2, · · · , n.
Exercises 6.9 Approximate the value of each of the following integrals for a given value of n and using n X (a) Left-hand end point approximation: f (xi−1 )(xi − xi−1 ) i=1 n X
(b) Right-hand end point approximation: (c) Mid point approximation:
n X i=1
f (xi )(xi − xi−1 )
i=1
f
xi−1 + xi 2
(xi − xi−1 )
(d) Composite Trapezoidal Rule (e) Composite Simpson’s Rule 1.
3
Z 1
3.
1
Z 0
5.
1
Z 0
7.
1 dx, n = 10 x 1 √ dx, n = 10 1+ x √ 1+ x dx, n = 10 1+x
2.
2
(x − 2x) dx, n = 10
4.
9.
6.
Z
2
1 dx, n = 10 1 + x2
2
Z
x3 dx, n = 10 0
8.
1
Z
(1 + x2 )1/2 dx, n = 10 0
1 3 1/2
(1 + x ) 0
1 √ dx, n = 10 x
1
0
Z
4 2
2
Z
Z
dx, n = 10
10.
1
Z
(1 + x4 )1/2 dx, n = 10 0
Chapter 7 Improper Integrals and Indeterminate Forms 7.1
Integrals over Unbounded Intervals
Definition 7.1.1 Suppose that a function f is continuous on (−∞, ∞). Then we define the following improper integrals when the limits exist Z
∞
a Z b
f (x)dx = lim
b→∞
b
Z
f (x)dx
(1)
a
Z
b
f (x)dx f (x)dx = lim a→−∞ a −∞ Z ∞ Z c Z ∞ f (x)dx = f (x)dx + f (x)dx −∞
−∞
(2) (3)
c
provided the integrals on the right hand side exist for some c. If these improper integrals exist, we say that they are convergent; otherwise they are said to be divergent. Definition 7.1.2 Suppose that a function f is continuous on [0, ∞). Then the Laplace transform of f , written L(f ) or F (s), is defined by Z ∞ L(f ) = F (s) = e−st f (t)dt . 0
294
7.1. INTEGRALS OVER UNBOUNDED INTERVALS
295
Theorem 7.1.1 The Laplace transform has the following properties: L(c) =
c s
L(eat ) =
(4) 1 s−a
s − a2 a L(sinh at) = 2 s − a2 s L(cos ωt) = 2 s + ω2 ω L(sin ωt) = 2 s + ω2 1 L(t) = 2 s L(cosh at) =
Proof. (i) L(c) =
∞
Z
ce−st dt
0
∞ ce−st
= −s 0
c = . s
at
(ii) L(e ) =
∞
Z
eat e−st dt
0
=
∞
Z
e−(s−a)t dt
0
∞ e−(s−a)t
= −(s − a) 0 =
1 s−a
s2
(5) (6) (7) (8) (9) (10)
296CHAPTER 7. IMPROPER INTEGRALS AND INDETERMINATE FORMS provided s > a. (iii) L(cosh at) =
∞
Z 0
eat + e−at 2
e−st dt
1 = [L(eat ) + L(e−at )] 2 1 1 1 = + 2 s−a s+a =
s , s > |a|. − a2
s2
∞
Z
1 at (e − e−at )e−st dt 2 0 1 1 1 = − , s > |a| 2 s−a s+a
(iv) L(sinh at) =
=
(v) L(cos ωt) =
a , s > |a|. − a2
s2 ∞
Z
cos ωte−st dt
0
= =
(vi) L(sin ωt) =
−st ∞ 1 e (−s cos ωt + ω sin ωt) 0 ω 2 + s2 s . + s2
ω2
∞
Z
sin ωte−st dt
0
= =
ω2
−st ∞ 1 e (−s sin ωt − ω cos ωt) 0 2 +s
ω2
ω . + s2
7.1. INTEGRALS OVER UNBOUNDED INTERVALS (vii) L(t) =
∞
Z
te−st dt;
297
(u = t, dv = e−st dt)
0
∞ Z ∞ −st e te−st
+ = dt
−s 0 s 0
∞ e−st
= −s2 0 =
1 . s2
This completes the proof of Theorem 7.1.1. Theorem 7.1.2 Suppose that f and g are continuous on [a, ∞) and 0 ≤ f (x) ≤ g(x) on [a, ∞). (i) If
∞
Z
g(x)dx converges, then a
(ii) If
f (x)dx diverges, then a
f (x)dx converges. a
∞
Z
∞
Z
∞
Z
g(x)dx diverges. a
Proof. The proof of this follows from the order properties of the integral and is omitted. Definition 7.1.3 For each x > 0, the Gamma function, denoted Γ(x), is defined by Z ∞ Γ(x) = tx−1 e−t dt. 0
Theorem 7.1.3 The Gamma function has the following properties: Γ(1) = 1 Γ(x + 1) = xΓ(x) Γ(n + 1) = n!, n = natural number
(11) (12) (13)
298CHAPTER 7. IMPROPER INTEGRALS AND INDETERMINATE FORMS Proof. Z
∞
e−t dt 0
∞ = −e−t
Γ(1) =
0
=1 Z Γ(x + 1) =
∞
tx e−t dt; (u = tx , dv = e−t dt) 0 Z ∞
x −t ∞ tx−1 e−t dt = −t e 0 + x 0
= xΓ(x), x > 0 Γ(2) = 1Γ(1) = 1 Γ(3) = 2Γ(2) = 1 · 2 = 2! If Γ(k) = (k − 1)!, then Γ(k + 1) = kΓ(k) = k((k − 1)!) = k!. By the principle of mathematical induction, Γ(n + 1) = n!
for all natural numbers n. This completes the proof of this theorem. Theorem 7.1.4 Let f be the normal probability distribution function defined by 2 1 √ − x−µ 2σ f (x) = √ e σ 2π where µ is the constant mean of the distribution and σ is the constant standard deviation of the distribution. Then the improper integral Z ∞ f (x)dx = 1. −∞
Let F be the normal distribution function defined by Z x F (x) = f (x)dx. −∞
7.2. DISCONTINUITIES AT END POINTS
299
Then F (b) − F (a) represents the percentage of normally distributed data that lies between a and b. This percentage is given by Z b f (x)dx. a
Furthermore, Z
µ+bσ
f (x)dx = µ+aσ
b
Z a
1 2 √ e−x /2 dx. 2π
Proof. The proof of this theorem is omitted. Exercises 7.1 None available.
7.2
Discontinuities at End Points
Definition 7.2.1 (i) Suppose that f is continuous on [a, b) and lim f (x) = +∞ or − ∞.
x→b−
Then, we define b
Z
f (x)dx = lim− x→b
a
x
Z
f (x)dx. a
If the limit exists, we say that the improper integral converges; otherwise we say that it diverges. (ii) Suppose that f is continuous on (a, b] and lim f (x) = +∞ or − ∞.
x→a+
Then we define, b
Z a
f (x)dx = lim+ x→a
b
Z
f (x)dx. x
If the limit exists, we say that the improper integral converges; otherwise we say that it diverges. Exercises 7.2 1. Suppose that f is continuous on (−∞, ∞) and g 0 (x) = f (x). Then define each of the following improper integrals:
300CHAPTER 7. IMPROPER INTEGRALS AND INDETERMINATE FORMS (a)
+∞
Z
f (x)dx a
(b)
b
Z
f (x)dx −∞
(c)
+∞
Z
f (x)dx −∞
2. Suppose that f is continuous on the open interval (a, b) and g 0 (x) = f (x) on (a, b). Define each of the following improper integrals if f is not continuous at a or b: Z x (a) f (x)dx, a ≤ x < b a
(b)
b
Z
f (x)dx, a < x ≤ b x
(c)
b
Z
f (x)dx a +∞
3. Prove that
Z
4. Prove that
Z
5. Prove that
Z
e−x dx = 1 0 1
π 1 √ dx = 2 1 − x2
0
+∞ −∞
1 dx = π 1 + x2
∞
Z
1 1 dx = , if and only if p > 1. p x p−1 1 Z +∞ Z ∞ 2 −x2 7. Show that e dx = 2 e−x dx. Use the comparison between −∞ Z +∞0 2 2 e−x and e−x . Show that e−x dx exists. 6. Prove that
−∞
8. Prove that
1
Z 0
dx converges if and only if p < 1. xp
7.2. DISCONTINUITIES AT END POINTS
301
+∞
9. Evaluate
Z
10. Evaluate
Z
e−x sin(2x)dx. 0 +∞
e−4x cos(3x)dx. 0
11. Evaluate
+∞
Z
x2 e−x dx. 0
12. Evaluate
+∞
Z
xe−x dx. 0
13. Prove that
∞
Z
sin(2x)dx diverges. 0
14. Prove that
∞
Z
cos(3x)dx diverges. 0
15. Compute the volume of the solid generated when the area between the 2 graph of y = e−x and the x-axis is rotated about the y-axis. 16. Compute the volume of the solid generated when the area between the graph of y = e−x , 0 ≤ x < ∞ and the x-axis is rotated (a) about the x-axis (b) about the y-axis. 1 17. Let A represent the area bounded by the graph y = , 1 ≤ x < ∞ x and the x-axis. Let V denote the volume generated when the area A is rotated about the x-axis. (a) show that A is +∞ (b) show that V = π (c) show that the surface area of V is +∞. (d) Is it possible to fill the volume V with paint and not be able to paint its surface? Explain. 18. Let A represent the area bounded by the graph of y = e−2x , 0 ≤ x < ∞, and y = 0.
302CHAPTER 7. IMPROPER INTEGRALS AND INDETERMINATE FORMS (a) Compute the area of A. (b) Compute the volume generated when A is rotated about the x-axis. (c) Compute the volume generated when A is rotated about the y-axis. 19. Assume that
+∞
Z
Z p sin(x )dx = (π/8). Compute
+∞
2
0
20. It is known that
+∞
Z
2
e−x =
0
sin x √ dx. x
√ π.
−∞ +∞
(a) Compute
Z
(b) Compute
Z
(c) Compute
Z
2
e−x dx. 0 +∞ 0 +∞
e−x √ dx. x 2
e−4x dx. 0
Definition 7.2.2 Suppose that f (t) is continuous on [0, ∞) and there exist some constants a > 0, M > 0 and T > 0 such that |f (t)| < M eat for all t ≥ T . Then we define the Laplace transform of f (t), denoted L{f (t)}, by Z ∞ L{f (t)} = e−st f (t)dt 0
for all s ≥ s0 . In problems 21–34, compute L{f (t)} for the given f (t). ( 1 if t ≥ 0 22. f (t) = t 21. f (t) = 0 if t < 0 23. f (t) = t2
24. f (t) = t3
25. f (t) = tn , n = 1, 2, 3, · · ·
26. f (t) = ebt
27. f (t) = tebt
28. f (t) = tn ebt , n = 1, 2, 3, · · ·
7.2. DISCONTINUITIES AT END POINTS
303
29. f (t) =
eat − ebt a−b
30. f (t) =
aeat − bebt a−b
31. f (t) =
1 sin(bt) b
32. f (t) = cos(bt)
33. f (t) =
1 sinh(bt) b
34. f (t) = cosh(bt)
Definition 7.2.3 For x > 0, we define the Gamma function Γ(x) by Z +∞ Γ(x) = tx−1 e−t dt. 0
In problems 35–40 assume that Γ(x) exists for x > 0 and
+∞
Z
2
e−x = 0
1√ π. 2
√ 35. Show that Γ(1/2) = π
36. Show that Γ(1) = 1
37. Prove that Γ(x + 1) = xΓ(x)
√ 3 π 38. Show that Γ = 2 2
3 √ 5 39. Show that Γ = π 2 4
40. Show that Γ(n + 1) = n!
In problems 41–60, evaluate the given improper integrals. Z +∞ Z +∞ dx −x2 41. 2xe dx 42. x3/2 0 1 43.
+∞
Z 4
45.
+∞
Z 1
47.
+∞
Z 2
dx x5/2 x dx (1 + x2 )3/2 1 dx x(ln x)2
44.
+∞
Z 1
46.
+∞
Z
16
48.
4x dx 1 + x2
+∞
Z 2
x2
4 dx −4
1 dx, p > 1 x(ln x)p
304CHAPTER 7. IMPROPER INTEGRALS AND INDETERMINATE FORMS 49.
1
Z
3xe
−x2
dx
50.
−∞
51.
2 dx x e + e−x
0
53.
2
Z
55.
5
Z 0
57.
0
59.
0
54.
56.
p
1−
(e−x )2
dx +9
x2
x √ dx 16 − x2
+∞
Z
dx √ x x2 − 4
2
√
e−x
4
Z 0
e− x √ dx x
∞
Z
∞
Z
−∞
x dx (25 − x2 )2/3
+∞
Z
52.
dx √ 4 − x2
0
ex dx −∞
∞
Z
2
Z
58.
∞
Z 0
dx
60.
dx √ x(x + 25)
+∞
Z
3
x2 e−x dx 0
7.3 Theorem 7.3.1 (Cauchy Mean Value Theorem) Suppose that two functions f and g are continuous on the closed interval [a, b], differentiable on the open interval (a, b) and g 0 (x) 6= 0 on (a, b). Then there exists at least one number c such that a < c < b and f (b) − f (a) f 0 (c) = . 0 g (c) g(b) − g(a) Proof. See the proof of Theorem 4.1.6. Theorem 7.3.2 Suppose that f and g are continuous and differentiable on an open interval (a, b) and a < c < b. If f (c) = g(c) = 0, g 0 (x) 6= 0 on (a, b) and f 0 (x) =L lim 0 x→c g (x) then lim
x→c
f (x) = L. g(x)
7.3.
305
Proof. See the proof of Theorem 4.1.7. Theorem 7.3.3 (L’Hôpital’s Rule) Let lim represent one of the limits lim, lim+ , lim− ,
x→c
x→c
x→c
lim , or
x→+∞
lim .
x→−∞
Suppose that f and g are continuous and differentiable on an open interval (a, b) except at an interior point c, a < c < b. Suppose further that g 0 (x) 6= 0 on (a, b), lim f (x) = lim g(x) = 0 or lim f (x) = lim g(x) = +∞ or −∞. If lim
f 0 (x) = L, +∞ or − ∞ g 0 (x)
then lim
f 0 (x) f (x) = lim 0 . g(x) g (x)
Proof. The proof of this theorem is omitted. Definition 7.3.1 (Extended Arithmetic) For the sake of convenience in dealing with indeterminate forms, we define the following arithmetic operations with real numbers, +∞ and −∞. Let c be a real number and c > 0. Then we define + ∞ + ∞ = +∞, −∞ − ∞ = −∞, c(+∞) = +∞, c(−∞) = −∞ c −c c (−c)(+∞) = −∞, (−c)(−∞) = +∞, = 0, = 0, = 0, +∞ +∞ −∞ −c = 0, (+∞)c = +∞, (+∞)−c = 0, (+∞)(+∞) = +∞, (+∞)(−∞) = −∞, −∞ (−∞)(−∞) = +∞. Definition 7.3.2 The following operations are indeterminate: 0 +∞ +∞ −∞ −∞ , , , , ∞ − ∞, 0 · ∞, 00 , 1∞ , ∞0 . 0 +∞ −∞ −∞ +∞ Remark 23 The L’Hôpital’s Rule can be applied directly to the 00 and ±∞ ±∞ forms. The forms ∞ − ∞ and 0 · ∞ can be changed to the 00 or ±∞ by ±∞ using arithmetic operations. For the 00 and 1∞ forms we use the following procedure: ln(f (x)) lim(f (x))g(x) = lim eg(x) ln(f (x)) = elim (1/g(x)) . It is best to study a lot of examples and work problems.
306CHAPTER 7. IMPROPER INTEGRALS AND INDETERMINATE FORMS Exercises 7.3 1. Prove the Theorem of the Mean: Suppose that a function f is continuous on a closed and bounded interval [a, b] and f 0 exists on the open interval (a, b). Then there exists at least one number c such that a < c < b and (1)
f (b) − f (a) = f 0 (c) b−a
(2) f (b) = f (a) + f 0 (c)(b − a).
2. Prove the Generalized Theorem of the Mean: Suppose that f and g are continuous on a closed and bounded interval [a, b] and f 0 and g 0 exist on the open interval (a, b) and g 0 (x) 6= 0 for any x in (a, b). Then there exists some c such that a < c < b and f 0 (c) f (b) − f (a) = 0 . g(b) − g(a) g (c) 3. Prove the following theorem known as l’Hôpital’s Rule: Suppose that f and g are differentiable functions, except possibly at a, such that lim f (x) = 0,
lim g(x) = 0,
x→a
x→a
Then lim
x→a
and
lim
x→a
f (x) = L. g(x)
f (x) f 0 (x) = lim 0 = L. g(x) x→a g (x)
4. Prove the following theorem known as an alternate form of l’Hôpital’s Rule: Suppose that f and g are differentiable functions, except possibly at a, such that lim f (x) = ∞,
x→a
lim g(x) = ∞,
x→a
Then lim
x→a
and
lim
x→a
f (x) f 0 (x) = lim 0 = L. g(x) x→a g (x)
f 0 (x) = L. g 0 (x)
7.3.
307
5. Prove that if f 0 and g 0 exist and lim f (x) = 0,
x→+∞
lim g(x) = 0,
x→+∞
then lim
x→+∞
and
lim
x→+∞
f 0 (x) = L, g 0 (x)
f (x) = L. g(x)
6. Prove that if f 0 and g 0 exist and lim f (x) = 0,
x→−∞
lim g(0) = 0,
x→+∞
then lim
x→−∞
and
f 0 (x) = L, x→−∞ g 0 (x) lim
f (x) = L. g(x)
7. Prove that if f 0 and g 0 exist and lim f (x) = ∞,
x→+∞
lim g(x) = ∞,
x→+∞
then lim
x→+∞
and
lim
f 0 (x) = L, g 0 (x)
lim
f 0 (x) = L, g 0 (x)
x→+∞
f (x) = L. g(x)
8. Prove that if f 0 and g 0 exist and lim f (x) = ∞,
x→−∞
lim g(x) = ∞,
x→−∞
then lim
x→+∞
and
x→−∞
f (x) = L. g(x)
9. Suppose that f 0 and f 00 exist in an open interval (a, b) containing c. Then prove that f (c + h) − 2f (c) + f (c − h) = f 00 (c). lim h→0 h2
308CHAPTER 7. IMPROPER INTEGRALS AND INDETERMINATE FORMS 10. Suppose that f 0 is continuous in an open interval (a, b) containing c. Then prove that f (c + h) − f (c − h) = f 0 (c). 2h
lim
h→0
11. Suppose that f (x) and g(x) are two polynomials such that f (x) = a0 xn + a1 xn−1 + · · · + an−1 x + an , a0 6= 0, g(x) = b0 xm + b1 xm−1 + · · · + bm−1 x + bm , b0 6= 0. Then prove that lim
x→+∞
0 if m > n f (x) = +∞ or − ∞ if m < n g(x) a0 /b0 if m = n
12. Suppose that f and g are differentiable functions, except possibly at c, and lim f (x) = 0,
lim g(x) = 0 and
x→c
x→c
lim g(x) ln(f (x)) = L.
x→c
Then prove that lim (f (x))g(x) = eL .
x→c
13. Suppose that f and g are differentiable functions, except possibly at c, and lim f (x) = +∞,
x→c
lim g(x) = 0 and
x→c
lim g(x) ln(f (x)) = L.
x→c
Then prove that lim (f (x))g(x) = eL .
x→c
14. Suppose that f and g are differentiable functions, except possibly at c, and lim f (x) = 1,
x→c
lim g(x) = +∞ and
x→c
lim g(x) ln(f (x)) = L.
x→c
Then prove that lim (f (x))g(x) = eL .
x→c
7.3.
309
15. Suppose that f and g are differentiable functions, except possibly at c, and lim f (x) = 0,
x→c
lim g(x) = +∞ and
x→c
lim
x→c
f (x) = L. (1/g(x))
Then prove that lim f (x)g(x) = L.
x→c 1
16. Prove that lim (1 + x) x = e. x→0
1 1 17. Prove that lim (1 − x) x = . x→0 e
18. Prove that lim
x→+∞
xn = 0 for each natural number n. ex
sin x − x = 0. x→0 x sin x π 20. Prove that limπ − x tan x = 1. x→ 2 2 19. Prove that lim+
In problems 21–50 evaluate each of the limits.
21. lim
sin(x2 ) x2
22. lim
1 − cos x2 x2
23. lim
sin(ax) sin(bx)
24. lim
tan(mx) tan(nx)
25. lim
e3x − 1 x
26. lim (1 + 2x)3/x
27. lim
ln(x + h) − ln(x) h
28. lim
x→0
x→0
x→0
h→0
29. lim (1 + mx)n/x x→0
x→0
x→0
x→0
h→0
30. lim
x→∞
ex+h − ex h ln(100 + x) x
310CHAPTER 7. IMPROPER INTEGRALS AND INDETERMINATE FORMS
31. lim (1 + sin mx)n/x x→0
33.
35.
sin x
lim (x)
x→0+
lim tan(2x) ln(x)
x→0+
x 2/x
32.
lim (sin x)x
x→0+
x4 − 2x3 + 10 34. lim x→∞ 3x4 + 2x3 − 7x + 1 2π 36. lim x sin x→+∞ x
37. lim (x + e )
38. lim
39. lim (1 + sin mx)n/x
40.
x→0
x→∞
x→0
41.
43.
lim (e
x→0+
cot(ax) cot(bx)
lim+
x ln x
x→0
2/ ln x
− 1)
lim+
x→0
45.
3x
2x + 3 sin x x→+∞ 4x + 2 sin x x+h b − bx , b > 0, b 6= 1 49. lim h→0 h
47.
lim
(ex − 1) sin x 51. lim x→0 cos x − cos2 x sin 5x x→0 1 − cos 4x x e +1 x 55. lim e ln x→+∞ ex 53.
lim+
3 + 2x 4 + 2x
x
lim (x)sin(3x)
x→0+
42. lim
x→0
cos 4x 1 − 2 x x2
ln x x→+∞ x 1 2 46. lim+ − x→0 x ln x 44.
48.
lim
lim x(b1/x − 1), b > 0, b 6= 1
x→+∞
50. lim
h→0
52.
logb (x + h) − logb x , b > 0, b 6= 1 h
lim x ln
x→+∞
x+1 x−1
54. lim
2x − 3x6 + x7 (1 − x)3
56. lim
tan x − sin x x3
x→1
x→0
7.3.
311
x3 sin 2x x→0 (1 − cos x)2 1 1+x 59. lim ln x→0 x 1−x 57. lim
61. lim
x→0
63.
65.
67.
69.
5x − 3x x2
60. lim
arctan x − x x3
x→0
x→0
sin(π cos x) x sin x
62.
lim
(ln x)n , n = 1, 2, · · · x
64.
lim
ln x (1 + x3 )1/2
66.
x→+∞
x→+∞
−x −2x
lim (1 − 3 )
lim (e
x→+∞
−x
+e
)
5 1 − 2 x−2 x +x−6
1 79. lim cot x − x→0 x
ln(tan 3x) ln(tan 4x)
sin x x
1/x2
x2 1 72. lim 1+ x→+∞ 2x 74. lim
1 1 − x sin 2x
76. lim
1 1 − 2 x sin x x
x→0
x→+∞
x→2
lim+
x2 3 70. lim cos x→+∞ x
−2x 1/x
√ 2 2 lim x x +b −x
77. lim
lim
x→+∞
x→0
3x+ln x 1 73. lim 1+ x→+∞ 2x
x→+∞
68. lim
x→0+
ln(1 + xe2x ) x2 1 x + e2x √ ln x x
lim
x→0
x 1 71. lim+ ln x→0 x
75.
58. lim
x→0
78.
lim
x→0+
80. lim
x→0
1 − ln x
1 x
1 1 − 2 x tan2 x
312CHAPTER 7. IMPROPER INTEGRALS AND INDETERMINATE FORMS 81. lim
x→0
e−x 1 − x x e −1
x2 sin x1 83. lim x→0 sin x
82. lim
x→∞
1 84. lim x sin x→∞ x
e − (1 + x)1/x x→0 x 1 1 87. lim+ − x→0 x2 x ln x
85. lim
89.
x − sin x x
86.
88.
x
lim (ln(1 + e ) − x)
90.
x→+∞
lim
ln(ln x) ln(x − ln x)
lim
1 x
x→+∞
x→+∞
lim
x→+∞
x
Z
1 x2
1
ln t dt 1+t x
Z
2
sin x dx
0
91. Suppose that f is defined and differentiable in an open interval (a, b). Suppose that a < c < b and f 00 (c) exists. Prove that f 00 (c) = lim
x→c
f (x) − f (c) − (x − c)f 0 (c) . ((x − c)2 /2!)
92. Suppose that f is defined and f 0 , f 00 , · · · , f (n−1) exist in an open interval (a, b). Also, suppose that a < c < b and f (n) (c) exists (a) Prove that f
(n)
(c) = lim
x→c
f (x) − f (c) − (x − c)f 0 (c) − · · · −
(x−c)n−1 n−1 f (c) (n−1)!
(x−c)n n!
.
(b) Show that there is a function En (x) defined on (a, b), except possibly at c, such that (x − c)n−1 (n−1) f (x) (n − 1)! (x − c)n (n) (x − c)n En (x) + f (c) + En (x) n! n!
f (x) = f (c) + (x − c)f 0 (c) + · · · +
7.3.
313 and lim En (x) = 0. Find E2 (x) if c = 0 and n→c
( x4 sin f (x) = 0
1 x
, x 6= 0 , x=0
(c) If f 0 (c) = · · · = f (n−1) (c) = 0, n is even, and f has a relative minimum at x = c, then show that f (n) (c) ≥ 0. What can be said if f has a relative maximum at c? What are the sufficient conditions for a relative maximum or minimum at c when f 0 (c) = · · · = f (n−1) (c) = 0? What can be said if n is odd and f 0 (c) = · · · = f (n−1) (c) = 0 but f (n) (c) 6= 0. 93. Suppose that f and g are defined, have derivatives of order 1, 2, · · · , n−1 in an open interval (a, b), a < c < b, f (n) (c) and g (n) (c) exist and g (n) (c) 6= 0. Prove that if f and g, as well as their first n − 1 derivatives are 0, then f (n) (c) f (x) = (n) . lim x→c g(x) g (c) Evaluate the following limits:
94. lim
x→0
x2 sin x1 x
1
96. lim x( 1−x )
95. lim
x→0
97.
x→1
xx − x 99. 98. lim+ x→1 1 − x + ln x 1 + ex n 100. lim x ln , n = 1, 2, · · · x→+∞ ex 101. lim
x→0
x
Rx
2
e−t dx 1 − e−x2 0
cos
π 2
cos x 2 sin x
lim x(ln(x))n , n = 1, 2, 3, · · ·
x→0+
lim
x→+∞
x3/2 ln x (1 + x4 )1/2
314CHAPTER 7. IMPROPER INTEGRALS AND INDETERMINATE FORMS
7.4
Improper Integrals
1. Suppose that f is continuous on (−∞, ∞) and g 0 (x) = f (x). Then define each of the following improper integrals:
Chapter 8 Infinite Series 8.1
Sequences
Definition 8.1.1 An infinite sequence (or sequence) is a function, say f , whose domain is the set of all integers greater than or equal to some integer m. If n is an integer greater than or equal to m and f (n) = an , then we express the sequence by writing its range in any of the following ways: 1. f (m), f (m + 1), f (m + 2), . . . 2. am , am+1 , am+2 , . . . 3. {f (n) : n â&#x2030;Ľ m} 4. {f (n)}â&#x2C6;&#x17E; n=m 5. {an }â&#x2C6;&#x17E; n=m Definition 8.1.2 A sequence {an }â&#x2C6;&#x17E; n=m is said to converge to a real number L (or has limit L) if for each > 0 there exists some positive integer M such that |an â&#x2C6;&#x2019; L| < whenever n â&#x2030;Ľ M . We write, lim an = L or an â&#x2020;&#x2019; L as n â&#x2020;&#x2019; â&#x2C6;&#x17E;.
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
If the sequence does not converge to a finite number L, we say that it diverges.
315
316
CHAPTER 8. INFINITE SERIES
â&#x2C6;&#x17E; Theorem 8.1.1 Suppose that c is a positive real number, {an }â&#x2C6;&#x17E; n=m and {bn }n=m are convergent sequences. Then
(i) lim (can ) = c lim an nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
(ii) lim (an + bn ) = lim an + lim bn nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
(iii) lim (an â&#x2C6;&#x2019; bn ) = lim an â&#x2C6;&#x2019; lim bn nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
(iv) lim (an bn ) = lim an lim bn nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
an bn
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
limnâ&#x2020;&#x2019;â&#x2C6;&#x17E; an , if lim bn 6= 0. nâ&#x2020;&#x2019;â&#x2C6;&#x17E; nâ&#x2020;&#x2019;â&#x2C6;&#x17E; limnâ&#x2020;&#x2019;â&#x2C6;&#x17E; bn c (vi) lim (an )c = lim an (v) lim
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
=
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
(vii) lim (ean ) = elimnâ&#x2020;&#x2019;â&#x2C6;&#x17E; an nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
(viii) Suppose that an â&#x2030;¤ bn â&#x2030;¤ cn for all n â&#x2030;¥ m and lim an = lim cn = L.
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
Then lim bn = L.
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
â&#x2C6;&#x17E; Proof. Suppose that {an }â&#x2C6;&#x17E; n=m converges to a and {bn }n=m converges to b. Let 1 > 0 be given. Then there exist natural numbers N and M such that
|an â&#x2C6;&#x2019; a| < 1 if n â&#x2030;¥ N, |bn â&#x2C6;&#x2019; b| < 1 if n â&#x2030;¥ M. Part (i) Let > 0 be given and c 6= 0. Let 1 =
(1) (2)
and n â&#x2030;¥ N + M . Then 2|c|
by the inequalities (1) and (2), we get |can â&#x2C6;&#x2019; ca| = |c| |an â&#x2C6;&#x2019; a| < |c| 1 < .
8.1. SEQUENCES
317
This completes the proof of Part (i). Part (ii) Let > 0 be given and 1 = inequalities (1) and (2), we get
. Let m â&#x2030;¥ N + M . Then by the 2
|(an + bn ) â&#x2C6;&#x2019; (a + b)| = |(an â&#x2C6;&#x2019; a) + (bn â&#x2C6;&#x2019; b)| â&#x2030;¤ |an â&#x2C6;&#x2019; a| + |bn â&#x2C6;&#x2019; b| < 1 + 1 = . This completes the proof of Part (ii). Part (iii) lim (an â&#x2C6;&#x2019; bn ) = lim (an + (â&#x2C6;&#x2019;1)bn )
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
= lim an + lim [(â&#x2C6;&#x2019;1)bn ] (by Part (ii)) nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
= lim an + (â&#x2C6;&#x2019;1) lim bn nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
(by Part (i))
= a + (â&#x2C6;&#x2019;1)b = a â&#x2C6;&#x2019; b. Part (iv) Let > 0 be given and 1 = min 1,
. If n â&#x2030;¥ N + M , 1 + |a| + |b|
then by the inequalities (1) and (2) we have |an bn â&#x2C6;&#x2019; ab| = |[(an â&#x2C6;&#x2019; a) + a][(bn â&#x2C6;&#x2019; b) + b] â&#x2C6;&#x2019; ab| = |(an â&#x2C6;&#x2019; a)(bn â&#x2C6;&#x2019; b) + (an â&#x2C6;&#x2019; a)b + a(bn â&#x2C6;&#x2019; b| â&#x2030;¤ |an â&#x2C6;&#x2019; a| |bn â&#x2C6;&#x2019; b| + |b| |an â&#x2C6;&#x2019; a| + |a| |bn â&#x2C6;&#x2019; b| < 21 + |b| 1 + |a| 1 = 1 ( 1 + |b| + |a|) â&#x2030;¤ 1 (1 + |b| + |a|) â&#x2030;¤ . Part (v) First we assume that b > 0 and prove that lim
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
1 1 = . bn b
318 By taking 1 =
CHAPTER 8. INFINITE SERIES 1 b and using inequality (2) for n â&#x2030;¥ M , we get 2 1 1 1 b, â&#x2C6;&#x2019; b < bn â&#x2C6;&#x2019; b < b, 2 2 2 1 3 2 1 2 b < bn < b, 0 < < < . 2 2 3b bn b
|bn â&#x2C6;&#x2019; b| <
Then, for n â&#x2030;¥ M , we get
1
b â&#x2C6;&#x2019; bn
1
â&#x2C6;&#x2019; =
bn b b â&#x2C6;&#x2019; nb
1 1 · b bn 2 < |bn â&#x2C6;&#x2019; b| · 2 . (3) b b b2 Let > 0 be given. Choose 2 = min , . There exists some natural 2 2 number N such that if n â&#x2030;¥ N , then = |bn â&#x2C6;&#x2019; b| ·
|bn â&#x2C6;&#x2019; b| < 2 . If n â&#x2030;¥ N + M , then the inequalities (3) and (4) imply that
1 1
â&#x2C6;&#x2019; < |bn â&#x2C6;&#x2019; b| 2
bn b
b2 2 < 2 2 b â&#x2030;¤ . It follows that 1 1 = lim nâ&#x2020;&#x2019;â&#x2C6;&#x17E; bn b an 1 lim = lim (an ) · lim nâ&#x2020;&#x2019;â&#x2C6;&#x17E; nâ&#x2020;&#x2019;â&#x2C6;&#x17E; nâ&#x2020;&#x2019;â&#x2C6;&#x17E; bn bn 1 =a· b a = . b
(4)
8.1. SEQUENCES
319
If b < 0, then lim
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
an bn
= lim (â&#x2C6;&#x2019;an ) · lim nâ&#x2020;&#x2019;â&#x2C6;&#x17E; nâ&#x2020;&#x2019;â&#x2C6;&#x17E; 1 = (â&#x2C6;&#x2019;a) â&#x2C6;&#x2019;b a = . b
1 â&#x2C6;&#x2019;bn
This completes the proof of Part (v). Part (vi) Since f (x) = xc is a continuous function, lim (an )c =
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
lim an
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
c
= ac .
Part (vii) Since f (x) = ex is a continuous function, lim ean = elimnâ&#x2020;&#x2019;â&#x2C6;&#x17E;
an
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
= ea .
Part (viii) Suppose that an â&#x2030;¤ bn â&#x2030;¤ cn for all n â&#x2030;¥ m and lim an = L = lim cn = L.
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
Let > 0 be given. Then there exists natural numbers N and M such that â&#x2C6;&#x2019; , < an â&#x2C6;&#x2019; L < 2 2 2 â&#x2C6;&#x2019; |cn â&#x2C6;&#x2019; L| < , < cn â&#x2C6;&#x2019; L < 2 2 2
|an â&#x2C6;&#x2019; L| <
for n â&#x2030;¥ N, for n â&#x2030;¥ M.
If n â&#x2030;¥ N + M , then n > N and n > M and, hence, â&#x2C6;&#x2019; < an â&#x2C6;&#x2019; L â&#x2030;¤ bn â&#x2C6;&#x2019; L â&#x2030;¤ cn â&#x2C6;&#x2019; L < . 2 2 It follows that lim bn = L.
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
This completes the proof of this theorem.
320
8.2
CHAPTER 8. INFINITE SERIES
Monotone Sequences
â&#x2C6;&#x17E; Definition 8.2.1 Let {tn }â&#x2C6;&#x17E; n=m be a given sequence. Then {tn }n=m is said to be
(a) increasing if tn < tn+1 for all n â&#x2030;Ľ m; (b) decreasing if tn+1 < tn for all n â&#x2030;Ľ m; (c) nondecreasing if tn â&#x2030;¤ tn+1 for all n â&#x2030;Ľ m; (d) nonincreasing if tn+1 â&#x2030;¤ tn for all n â&#x2030;Ľ m; (e) bounded if a â&#x2030;¤ tn â&#x2030;¤ b for some constants a and b and all n â&#x2030;Ľ m; (f) monotone if {tn }â&#x2C6;&#x17E; n=m is increasing, decreasing, nondecreasing or nonincreasing. (g) a Cauchy sequence if for each > 0 there exists some M such that |an1 â&#x2C6;&#x2019; an2 | < whenever n1 â&#x2030;Ľ M and n2 â&#x2030;Ľ M . Theorem 8.2.1 (a) A monotone sequence converges to some real number if and only if it is a bounded sequence. (b) A sequence is convergent if and only if it is a Cauchy sequence. Proof. Part (a) Suppose that an â&#x2030;¤ an+1 â&#x2030;¤ B for all n â&#x2030;Ľ M and some B. Let L be the least upper bound of the sequence {an }â&#x2C6;&#x17E; n=m . Let > 0 be given. Then there exists some natural number N such that L â&#x2C6;&#x2019; < aN â&#x2030;¤ L. Then for each n â&#x2030;Ľ N , we have L â&#x2C6;&#x2019; < aN â&#x2030;¤ an â&#x2030;¤ L. By definition {an }â&#x2C6;&#x17E; n=m converges to L. Similarly, suppose that B â&#x2030;¤ an+1 â&#x2030;¤ an for all n â&#x2030;Ľ M . Let L be the â&#x2C6;&#x17E; greatest lower bound of {an }â&#x2C6;&#x17E; n=m . Then {an }n=m converges to L. It follows that a bounded monotone sequence converges. Conversely, suppose that a
8.2. MONOTONE SEQUENCES
321
monotone sequence {an }â&#x2C6;&#x17E; n=m converges to L. Let = 1. Then there exists some natural number N such that if n â&#x2030;Ľ N , then |an â&#x2C6;&#x2019; L| < â&#x2C6;&#x2019; < an â&#x2C6;&#x2019; L < L â&#x2C6;&#x2019; < an < L + . The set {an : m â&#x2030;¤ n â&#x2030;¤ N } is bounded and the set {an : n â&#x2030;Ľ N } is bounded. It follows that {an }â&#x2C6;&#x17E; n=m is bounded. This completes the proof of Part (a) of the theorem. Part (b) First, let us suppose that {an }â&#x2C6;&#x17E; n=m converges to L. Let > 0 be given. Then > 0 and hence there exists some natural number N such that 2 for all natural numbers p â&#x2030;Ľ N and q â&#x2030;Ľ N , we have and |aq â&#x2C6;&#x2019; L| < 2 2 |ap â&#x2C6;&#x2019; aq | = |(ap â&#x2C6;&#x2019; L) + (L + aq )| â&#x2030;¤ |ap â&#x2C6;&#x2019; L| + |a1 â&#x2C6;&#x2019; L| < + 2 2 = . |ap â&#x2C6;&#x2019; L| <
It follows that {an }â&#x2C6;&#x17E; n=m is a Cauchy sequence. Next, we suppose that {an }â&#x2C6;&#x17E; n=m is a Cauchy sequence. Let S = {an : m â&#x2030;¤ n < â&#x2C6;&#x17E;}. Suppose > 0. Then there exists some natural number N such that for all p â&#x2030;Ľ 1 |aN +p â&#x2C6;&#x2019; aN | < , aN â&#x2C6;&#x2019; < aN +p < aN + 2 2 2
(1)
It follows that S is a bounded set. If S is an infinite set, then S has some â&#x2C6;&#x17E; limit point q and some subsequence {ank }â&#x2C6;&#x17E; k=1 of {an }n=m that converges to q. Since > 0, there exists some natural number M such that for all k â&#x2030;Ľ M , we have (2) |ank â&#x2C6;&#x2019; q| < 2
322
CHAPTER 8. INFINITE SERIES
Also, for all k â&#x2030;Ľ N + M , we get nk â&#x2030;Ľ k â&#x2030;Ľ N + M and |ak â&#x2C6;&#x2019; q| = |ak â&#x2C6;&#x2019; ank + ank â&#x2C6;&#x2019; q| â&#x2030;¤ |ank â&#x2C6;&#x2019; ak | + |ank â&#x2C6;&#x2019; q| < + 2 (by (1) and (2)) 2 = . It follows that the sequence {an }â&#x2C6;&#x17E; n=m converges to q. If S is a finite set, then some ak is repeated infinite number of times and hence some subsequences of â&#x2C6;&#x17E; {an }â&#x2C6;&#x17E; n=m converges to ak . By the preceding argument {an }n=m also converges to ak . This completes the proof of this theorem. Theorem 8.2.2 Let {f (n)}â&#x2C6;&#x17E; n=m be a sequence where f is a differentiable function defined for all real numbers x â&#x2030;Ľ m. Then the sequence {f (n)}â&#x2C6;&#x17E; n=m is (a) increasing if f 0 (x) > 0 for all x > m; (b) decreasing if f 0 (x) < 0 for all x > m; (c) nondecreasing if f 0 (x) â&#x2030;Ľ 0 for all x > m; (d) nonincreasing if f 0 (x) â&#x2030;¤ 0 for all x > m. Proof. Suppose that m â&#x2030;¤ a < b. Then by the Mean Value Theorem for derivatives, there exists some c such that a < c < b and f (b) â&#x2C6;&#x2019; f (a) = f 0 (c), bâ&#x2C6;&#x2019;a f (b) = f (a) + f 0 (c)(b â&#x2C6;&#x2019; a). The theorem follows from the above equation by considering the value of f 0 (c). In particular, for all natural numbers n â&#x2030;Ľ m, f (n + 1) = f (n) + f 0 (c), for some c such that n < c < n + 1. Part (a). If f 0 (c) > 0, then f (n + 1) > f (n) for all n â&#x2030;Ľ m. Part (b). If f 0 (c) < 0, then f (n + 1) < f (n) for all n â&#x2030;Ľ m. Part (c). If f 0 (c) â&#x2030;Ľ 0, then f (n + 1) â&#x2030;Ľ f (n) for all n â&#x2030;Ľ m. Part (d). If f 0 (c) â&#x2030;¤ 0, then f (n + 1) â&#x2030;¤ f (n) for all n â&#x2030;¤ m. This completes the proof of this theorem.
8.3. INFINITE SERIES
8.3
323
Infinite Series
Definition 8.3.1 Let {tn }∞ n=1 be a given sequence. Let s1 = t1 , s2 = t1 + t2 , s3 = t1 + t2 + t3 , · · · , sn =
n X
tk ,
k=1
for all natural number n. If the sequence {sn }∞ n=1 converges to a finite number L, then we write ∞ X L = t1 + t2 + t3 + · · · = tk . k=1
We call
n X
tk an infinite series and write
k=1
∞ X
tk = lim
n→∞
k=1
n X
tk = L.
k=1
We say that L is the sum of the series and the series converges to L. If a series does not converge to a finite number, we say that it diverges. The sequence {sn }∞ n=1 is called the sequence of the nth partial sums of the series. Theorem 8.3.1 Suppose that a and r are real numbers and a 6= 0. Then the geometric series 2
a + ar + ar + · · · =
∞ X
ark =
k=0
a , 1−r
if |r| < 1. The geometric series diverges if |r| ≥ 1. Proof. For each natural number n, let sn = a + ar + · · · + arn−1 . On multiplying both sides by r, we get rsn = ar + ar2 + · · · + arn−1 + arn sn − rsn = a − arn (1 − r)sn = a(1 − rn ) a a sn = − rn . 1−r 1−r
324
CHAPTER 8. INFINITE SERIES
If |r| < 1, then lim sn =
n→∞
a a a − lim rn = . 1 − r 1 − r n→∞ 1−r
If |r| > 1, then lim rn is not finite and so the sequence {sn }∞ n=1 of nth partial n→∞ sums diverges. If r = 1, then sn = na and lim na is not a finite number. n→∞ This completes the proof of the theorem. Theorem 8.3.2 (Divergence Test) If the series 0. If lim tn 6= 0, then the series diverges.
∞ X
tk converges, then lim tn = n→∞
k=1
n→∞
Proof. Suppose that the series converges to L. Then ! n n−1 X X lim an = lim ak − ak n→∞
n→∞
= lim
n→∞
k=1
n X
k=1
ak − lim
n→∞
k=1
n−1 X
ak
k=1
=L−L = 0. The rest of the theorem follows from the preceding argument. This completes the proof of this theorem. Theorem 8.3.3 (The Integral Test) Let f be a function that is defined, continuous and decreasing on [1, ∞) such that f (x) > 0 for all x ≥ 1. Then Z ∞ ∞ X f (n) and f (x)dx 1
n=1
either both converge or both diverge. Proof. Suppose that f is decreasing and continuous on [1, ∞), and f (x) > 0 for all x ≥ 1. Then for all natural numbers n, we get, Z n+1 n+1 n X X f (k) ≤ f (x)dx ≤ f (k) k=2
1
k=1
8.3. INFINITE SERIES
325
graph
It follows that,
∞ X
f (k) ≤
∞
Z
f (x)dx ≤ 1
k=2
∞ X
f (k).
k=1
Since f (1) is a finite number, it follows that ∞ X
f (k) and
∞
Z
f (x)dx 1
k=1
either both converge or both diverge. This completes the proof of the theorem. Theorem 8.3.4 Suppose that p > 0. Then the p-series ∞ X 1 np n=1
converges P∞if p1 > 1 and diverges if 0 < p ≤ 1. In particular, the harmonic series n=1 n diverges. Proof. Suppose that p > 0. Then Z ∞ Z ∞ 1 dx = x−p dx p x 1 1
∞ x1−p
= 1 − p 1 1 = lim x1−p − 1 . 1 − p x→∞ It follows that the integral converges if p > 1 and diverges if p < 1. If p = 1, then
∞ Z ∞
1 dx = ln x
= ∞. x 1 1
Hence, the p-series converges if p > 1 and diverges if 0 < p ≤ 1. This completes the proof of this theorem.
326
CHAPTER 8. INFINITE SERIES
Exercises 8.1 1. Define the statement that the sequence {an }â&#x2C6;&#x17E; n=1 converges to L. â&#x2C6;&#x17E; 2. Suppose the sequence {an }â&#x2C6;&#x17E; n=1 converges to L and the sequences {bn }n=1 converges to M . Then prove that
(a) {can }â&#x2C6;&#x17E; n=1 converges to cL, where c is constant. (b) {an + bn }â&#x2C6;&#x17E; n=1 converges to L + M . (c) {an â&#x2C6;&#x2019; bn }â&#x2C6;&#x17E; n=1 converges to L â&#x2C6;&#x2019; M . (d) {an bn }â&#x2C6;&#x17E; n=1 converges to LM . â&#x2C6;&#x17E; L an converges to , if M 6= 0. (e) bn n=1 M 3. Suppose that 0 < an â&#x2030;¤ an+1 < M for each natural number n. Then prove that (a) {an }â&#x2C6;&#x17E; n=1 converges. (b) {â&#x2C6;&#x2019;an }â&#x2C6;&#x17E; converges. k â&#x2C6;&#x17E;n=1 (c) an n=1 converges for each natural number k. 4. Prove that 5. Prove that
xn n!
â&#x2C6;&#x17E;
n! nn
â&#x2C6;&#x17E;
converges to 0 for every real number x.
n=1
converges to 0.
n=1
6. Prove that for each natural number n â&#x2030;Ľ 2, 1 1 1 1 1 + + ¡ ¡ ¡ + < ln(n) < 1 + + ¡ ¡ ¡ + . 2 3 n 2 nâ&#x2C6;&#x2019;1 Rn 1 1 1 1 1 1 for each (b) p + p + ¡ ¡ ¡ + p < 1 p dt < 1 + p + ¡ ¡ ¡ + 2 3 n t 2 (n â&#x2C6;&#x2019; 1)p p > 0. ( n )â&#x2C6;&#x17E; Z â&#x2C6;&#x17E; X 1 1 (c) converges if and only if dt converges. Dep p k t 1 k=1 n=1 ( n )â&#x2C6;&#x17E; X 1 termine the numbers p for which converges. kp n=1 (a)
n=1
8.4. SERIES WITH POSITIVE TERMS
7. Prove that
( n X
r
k=0
k
)â&#x2C6;&#x17E;
327
converges if and only if |r| < 1.
n=1
( n )â&#x2C6;&#x17E; X 1 8. Prove that diverges. k k=1 n=1
9. Prove that
( n X k=2
1 k ln k
)â&#x2C6;&#x17E;
diverges.
n=2
10. Prove that for each natural number m â&#x2030;¥ 2, Z m Z m+1 (a) (ln t)dt < ln(m!) < (ln t)dt 1
1
(b) m(ln(m) â&#x2C6;&#x2019; 1) < ln(m!) < (m + 1)(ln(m + 1) â&#x2C6;&#x2019; 1). mm (m + 1)m+1 < m! < . emâ&#x2C6;&#x2019;1 em (d) lim (m!)1/m = +â&#x2C6;&#x17E;. (c)
mâ&#x2020;&#x2019;+â&#x2C6;&#x17E;
(e)
lim
mâ&#x2020;&#x2019;+â&#x2C6;&#x17E;
(m!)1/m 1 = m e
11. Prove that {(â&#x2C6;&#x2019;1)n }â&#x2C6;&#x17E; n=1 does not converge. â&#x2C6;&#x17E; sin(1/n) converges to 1. 12. Prove that (1/n) n=1 â&#x2C6;&#x17E; sin n 13. Prove that converges to zero. n n=1
8.4
Series with Positive Terms
Theorem 8.4.1 (Algebraic Properties) Suppose that are convergent series and c > 0. Then â&#x2C6;&#x17E; â&#x2C6;&#x17E; â&#x2C6;&#x17E; X X X (i) (ak + bk ) = ak + bk k=1
k=1
k=1
Pâ&#x2C6;&#x17E;
k=1
ak and
Pâ&#x2C6;&#x17E;
k=1 bk
328 (ii)
CHAPTER 8. INFINITE SERIES ∞ ∞ ∞ X X X (ak − bk ) = ak − bk k=1
(iii)
∞ X
k=1
c ak = c
k=1
∞ X
k=1
ak
k=1
(iv) If m is any natural number, then the series ∞ X
∞ X
ck and
k=1
ck
k=m
either both converge or both diverge. Proof. Part (i) ∞ X (ak ± bk ) = lim
! n X (ak ± bk )
n→∞
k=1
= =
lim
n→∞ ∞ X
k=1 n X
ak
k=1 ∞ X
ak ±
k=1
!
±
lim
n→∞
n X
bk
!
k=1
bk .
k=1
Part (ii) This part also follows from the preceding argument. Part(iii) We see that ∞ X k=1
n X
c ak = lim
n→∞
=c =c
lim
k=1 n X
n→∞ ∞ X k=1
c ak
ak .
k=1
ak
!
!
8.4. SERIES WITH POSITIVE TERMS
329
Part (iv) We observe that ∞ X
ak =
k=1
m−1 X
ak +
k=1
∞ X
ak .
k=1
Therefore, ∞ X
ak = lim
n→∞
k=1
=
m−1 X
n X
ak
k=1
ak + lim
n→∞
k=1
n X
ak .
k=m
It follows that the series ∞ X k=1
ak
and
∞ X
ak
k=m
either both converge or both diverge. This completes the proof of this theorem. Theorem 8.4.2 (Comparison Test) Suppose that 0 < an ≤ bn for all natural numbers n ≥ 1. Pn (a) If there exists some M such that k=1 ak ≤ M , for all natural numbers P∞ n, then k=1 ak converges. If there exists no such M , then the series diverges. P∞ P (b) If ∞ k=1 ak converges. k=1 bk converges, then P∞ P a diverges, then (c) If ∞ k k=1 bk diverges. k=1 (d) If cn > 0 for all natural numbers n, and cn = L, 0 < L < ∞, n→∞ an P∞ P then the series ∞ k=1 ck either both converge or both diverge. k=1 ak and lim
330
CHAPTER 8. INFINITE SERIES
Proof. Let An =
n X k=1
ak , Bn =
n X
bk , 0 < an â&#x2030;¤ bn for all natural numbers
k=1
â&#x2C6;&#x17E; n. The sequences {An }â&#x2C6;&#x17E; n=1 and {Bn }n=1 are strictly increasing sequence. Let A represent the least upper bound of {An }â&#x2C6;&#x17E; n=1 and let B represent the least â&#x2C6;&#x17E; upper bound of {Bn }n=1
Part (a) If An â&#x2030;¤ M for all natural numbers, then {An }â&#x2C6;&#x17E; n=1 is a bounded and strictly increasing sequence. Then A is a finite number and {An }â&#x2C6;&#x17E; n=1 converges to A and â&#x2C6;&#x17E; X A= ak . k=1
Part (b) If
â&#x2C6;&#x17E; X
bk converges, then
k=1
natural numbers n. By Part (a),
â&#x2C6;&#x17E; X
bk = B and An â&#x2030;¤ Bn â&#x2030;¤ B for all
k=1 â&#x2C6;&#x17E; X
ak converges to A.
k=1
Part (c) If
â&#x2C6;&#x17E; X
â&#x2C6;&#x17E; ak diverges, then the sequence {An }â&#x2C6;&#x17E; n=1 diverges. Since {An }n=1
k=1
is strictly increasing and divergent, for every M there exists some m such that M < An â&#x2030;¤ Bn for all natural numbers n â&#x2030;Ľ m. It follows that {Bn }â&#x2C6;&#x17E; n=1 diverges. Part (d) Suppose that 0 < an and 0 < cn , 0 < L < â&#x2C6;&#x17E;, = lim
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
cn = L. an
Then there exists some natural number m such that
cn
â&#x2C6;&#x2019; L < 1
an
2
L and 2
8.4. SERIES WITH POSITIVE TERMS
331
for all natural numbers n ≥ m. Hence, for all n ≥ m, we have L cn L L cn 3 − < −L< , < < L 2 an 2 2 an 2 3 L an ≤ cn ≤ L an . 2 2 X X n n X 3 L mck ≤ ak ≤ L ak 2 k=m 2 k=m k=m ( n X
If
and
ak
k=1 (
n X k=1
If (
( n X
)∞
diverges, then
n=1 )∞
ck
(
m L X ak 2 k=m
)
diverges and, hence
n X
k=m
ck
)∞ n=m
both diverge.
)∞ k=1
(
)∞ X n 3 L ak 2 k=m
converges, then ak )∞ k=1 ( n )∞ X X and both converge. ck ck k=1
k=m
(
n=m
k=1
converges and, hence,
n=m
n=1
This completes the Proof of Theorem 8.4.2. Theorem 8.4.3 (Ratio Test) Suppose that 0 < an for every natural number n and an+1 lim = r. n→∞ an P Then the series ∞ k=1 ak (a) converges if r < 1; (b) diverges if r > 1; (c) may converge or diverge if r = 1; the test fails. Proof. Suppose that 0 < an for every natural number n and lim
n→∞
an+1 = r. an
332
CHAPTER 8. INFINITE SERIES
Let > 0 be given. Then there exists some natural number M such that
an+1
< , â&#x2C6;&#x2019; + r < an+1 < r + â&#x2C6;&#x2019; r
an an (r â&#x2C6;&#x2019; )an < an+1 < (r + )an (1) for all natural numbers n â&#x2030;¥ M . Part (a) Suppose that 0 â&#x2030;¤ r < 1 and = (1 â&#x2C6;&#x2019; r)/2. Then for each natural number k, we have k
am+k < (r + ) am =
1+r 2
k
am . . .
Hence, by (2), we get â&#x2C6;&#x17E; X
mâ&#x2C6;&#x2019;1 X
an =
n=1
an +
n=1 mâ&#x2C6;&#x2019;1 X
â&#x2C6;&#x17E; X
am+k
k=0
k â&#x2C6;&#x17E; X 1+r am < an + 2 n=1 k=0 mâ&#x2C6;&#x2019;1 X
=
n=1 mâ&#x2C6;&#x2019;1 X
=
an +
am 1 â&#x2C6;&#x2019; 1+r 2
an +
2am 1â&#x2C6;&#x2019;r
n=1
< â&#x2C6;&#x17E;. It follows that the series
â&#x2C6;&#x17E; X
an converges.
n=1
Part (b) Suppose that 1 < r, = (r â&#x2C6;&#x2019; 1)/2. Then by (1) we get an <
3r â&#x2C6;&#x2019; 1 an < an+1 2
for all n â&#x2030;¥ m. It follows that 0 < am â&#x2030;¤ lim am+k = lim an . kâ&#x2020;&#x2019;â&#x2C6;&#x17E;
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
(2)
8.4. SERIES WITH POSITIVE TERMS By the Divergence test, the series Part (c) For both series
â&#x2C6;&#x17E; X n=1
â&#x2C6;&#x17E; X
an diverges.
n=1 â&#x2C6;&#x17E; X
1 and n lim
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
333
n=1
1 , n2
an+1 = 1. an
â&#x2C6;&#x17E; â&#x2C6;&#x17E; X X 1 1 But, by the p-series test, diverges and converges. Thus, the n n2 n=1 n=1 ratio test fails to test the convergence or divergence of these series when r = 1. This completes the proof of Theorem 8.4.3.
Theorem 8.4.4 (Root Test) Suppose that 0 < an for each natural number n and lim (an )1/n = r. nâ&#x2020;&#x2019;â&#x2C6;&#x17E; P Then the series â&#x2C6;&#x17E; k=1 ak (a) converges if r < 1; (b) diverges if r > 1; (c) may converge or diverge if r = 1; the test fails. Proof. Suppose that 0 < an for each natural number n and lim (an )1/n = r.
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
Let > 0 be given. Then there exists some natural number m such that
(an )1/n â&#x2C6;&#x2019; r < r â&#x2C6;&#x2019; < (an )1/n < r + . . .
(3)
for all natural numbers n â&#x2030;Ľ m. Part (a) Suppose r < 1 and = n â&#x2030;Ľ m, we have 1/n
(an )
1+r . Then, by (3), for each natural number 2
1+r < 2
and an <
1â&#x2C6;&#x2019;r 2
n
.
334
CHAPTER 8. INFINITE SERIES
it follows that â&#x2C6;&#x17E; X n=1
ak =
mâ&#x2C6;&#x2019;1 X
n=1 mâ&#x2C6;&#x2019;1 X
an +
â&#x2C6;&#x17E; X
an
n=m â&#x2C6;&#x17E; X
n 1+r < an + 2 n=1 n=m ! m mâ&#x2C6;&#x2019;1 X 1 1+r = an + 1+r 2 1 â&#x2C6;&#x2019; 2 n=1 mâ&#x2C6;&#x2019;1 m X 1+r 2 = an + 2 1â&#x2C6;&#x2019;r n=1 < â&#x2C6;&#x17E;. Therefore,
â&#x2C6;&#x17E; X
ak converges.
n=1
Part (b) Suppose r > 1 and = (r â&#x2C6;&#x2019; 1)/2. Then, by (3), for each natural number n â&#x2030;Ľ m, we have 1+r = r + < (an )1/n 2 n 1+r 1< < an . 2 1<
It follows that lim an 6= 0 and, by the Divergence test, the series nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
â&#x2C6;&#x17E; X
an
n=1
diverges. â&#x2C6;&#x17E; â&#x2C6;&#x17E; X X 1 1 and we have r = 1, where Part (c) For each of the series n n2 n=1 n=1
r = lim (an )1/n . nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
â&#x2C6;&#x17E; X 1 1 diverges and the series converges by the p-series But the series 2 n n n=1 n=1 test. Therefore, the test fails to determine the convergence or divergence for these series when r = 1. This completes the proof of Theorem 8.4.4. â&#x2C6;&#x17E; X
8.4. SERIES WITH POSITIVE TERMS
335
Exercises 8.2 1. Define what is meant by
â&#x2C6;&#x17E; X
ak .
k=1
2. Define what is meant by the sequence of nth partial sums of the series â&#x2C6;&#x17E; X ak . k=1
3. Suppose that a 6= 0. Prove that
â&#x2C6;&#x17E; X
ark converges to
k=0
4. Prove that the series
â&#x2C6;&#x17E; X k=1
a if |r| < 1. 1â&#x2C6;&#x2019;r
3 1 converges to . k(k + 2) 4
â&#x2C6;&#x17E; X 1 1 5. Prove that converges to if p > 1 and diverges otherwise. p k pâ&#x2C6;&#x2019;1 k=1
6. Prove that
n n+1
â&#x2C6;&#x17E;
is an increasing sequence and the series
n=1
â&#x2C6;&#x17E; X n=1
ln
n n+1
diverges. 7. Prove that
â&#x2C6;&#x17E; X
(â&#x2C6;&#x2019;1)k xk converges to
â&#x2C6;&#x17E; X
x2k converges to
â&#x2C6;&#x17E; X
(â&#x2C6;&#x2019;1)k x2k converges to
k=0
8. Prove that
k=0
9. Prove that
k=0
10. Prove that if
â&#x2C6;&#x17E; X
1 if |x| < 1. 1+x
1 if |x| < 1. 1 â&#x2C6;&#x2019; x2 1 if |x| < 1. 1 + x2
ak converges, then lim ak = 0. Is the converse true? kâ&#x2020;&#x2019;â&#x2C6;&#x17E;
k=0
Explain your answer. 11. Suppose that if
â&#x2C6;&#x17E; X k=0
that
ak converges to L and
â&#x2C6;&#x17E; X k=0
bk converges to M . Prove
336
CHAPTER 8. INFINITE SERIES (a)
(b)
(c)
(d)
∞ X
k=0 ∞ X
k=0 ∞ X k=0 ∞ X
(c ak ) converges to cL for each constant c. (ak + bk ) converges to L + M . (ak − bk ) converges to L − M . ak bk may or may not converge to LM .
k=0
Z ∞ ∞ X 1 1 converges if and only if dt converges. Deter12. Prove that p k tp 1 k=1 mine the values of p for which the series converges. 13. Suppose that f (x) is continuous and decreasing on the interval [a, +∞). ∞ X Let ak = f (k) for each natural number k. Then the series ak conk=1 Z ∞ verges if and only if f (x)dx converges. a
14. Suppose that 0 ≤ ak ≤ ak+1 for each natural number k, and sn =
n X
Prove that if sn ≤ M for some M and all natural numbers n, then
k=1
converges. 15. Suppose that 0 ≤ ak ≤ bk for each natural number k. Prove that (a) if
(b) if
∞ X
k=1 ∞ X
bk converges, then ak diverges, then
k=1
(c) if lim ak 6= 0, then k→∞
k=1 ∞ X
∞ X
k=1 ∞ X
ak converges.
bk diverges.
k=1
∞ X k=1
ak diverges.
ak . ak
8.4. SERIES WITH POSITIVE TERMS (d) if lim ak = 0, then k→∞
∞ X
337
ak may or may not converge.
k=1
16. Suppose that 0 < ak for each natural number k. Prove that if lim (ak+1 /ak ) < k→∞ ∞ X 1, then ak converges. k=1
17. Suppose that 0 < ak for each natural number k. Prove that if lim (ak+1 /ak ) > k→∞ ∞ X 1, then ak diverges. k=1
18. Suppose that 0 < ak for each natural number k. Prove that if lim (ak+1 /ak ) = k→∞ ∞ X 1, then ak may or may not converge. k=1
19. Suppose that 0 < ak and 0 < bk for each natural number k. Prove that ∞ ∞ X X if 0 < lim (ak /bk ) < ∞, then ak converges if and only if bk k→∞
k=1
converges.
k=1
20. Suppose that 0 < ak for each natural number k. Prove that if lim (ak )1/k < k→∞ ∞ X 1, then ak converges. k=1
21. Suppose that 0 < ak for each natural number k. Prove that if lim (ak )1/k > k→∞ ∞ X 1, then ak diverges. k=1
22. Suppose that 0 < ak for each natural number k. Prove that if lim (ak )1/k = k→∞ ∞ X 1, then ak may or may not converge. k=1
23. A series
∞ X
ak is said to converge absolutely if
k=1
pose that lim |ak+1 /ak | = p. Prove that k→∞
∞ X k=1
|ak | converges. Sup-
338
CHAPTER 8. INFINITE SERIES (a)
∞ X
ak converges absolutely if p < 1.
∞ X
ak does not converge absolutely if p > 1.
∞ X
ak may or may not converge absolutely if p = 1.
k=1
(b)
k=1
(c)
k=1
24. A series
∞ X
ak is said to converge absolutely if
k=1
∞ X
|ak | converges. Sup-
k=1
pose that lim (|ak |)1/k = p. Prove that k→∞
(a)
∞ X
ak converges absolutely if p < 1.
∞ X
ak does not converge absolutely if p > 1.
∞ X
ak may or may not converge absolutely if p = 1.
k=1
(b)
k=1
(c)
k=1
25. Prove that if
∞ X
ak converges absolutely, then it converges. Is the
k=1
converse true? Justify your answer.
ak
26. Suppose that ak 6= 0, bk 6= 0 for any natural number k and lim
= p. k→∞ bk ∞ X Prove that if 0 < p < 1, then the series ak converges absolutely if and only if
∞ X
k=1
bk converges absolutely.
k=1
27. A series
∞ X k=1
ak is said to converge conditionally if
∞ X k=1
ak converges but
8.4. SERIES WITH POSITIVE TERMS ∞ X
339
|ak | diverges. Determine whether the series
k=1
∞ X (−1)n+1 converges n n=1
conditionally or absolutely. 28. Suppose that 0 < ak and |ak+1 | < |ak | for every natural number k. Prove ∞ ∞ X X k+1 that if lim ak = 0, then the series (−1) ak and (−1)k ak are k→+∞
k=1
k=1
both convergent. Furthermore, show that if s denotes the sum of the series, then s is between the nth partial sum sn and the (n + 1)st partial sum sn+1 for each natural number n. ∞ X n 29. Determine whether the series (−1)n n converges absolutely or condi3 n=1 tionally.
30. Determine whether the series
∞ X (2n)! (−1)n 10 converges absolutely or conn n=1
ditionally. In problems 31–62, test the given series for convergence, conditional convergence or absolute convergence. ∞ X n! 31. (−1)n n 5 n=1
∞ X 5n 32. (−1)n+1 n! n=1
n ∞ X 4 n 33. (−1) n 5 n=1
n ∞ X 4 n+1 2 34. (−1) n 5 n=1
35.
∞ X (−1)n n3/2 n=1
36.
∞ X (−1)n+1 n1/2 n=1
∞ X (−1)n 37. ,0 < p < 1 np n=1
∞ X (−1)n+1 38. ,1 < p np n=1
∞ X (n + 1) 39. (−1)n 2 n +2 n=1
∞ X (n + 1)2 40. (−1)n+1 3n n=1
340
CHAPTER 8. INFINITE SERIES
∞ X (n + 2)2 41. (−1)n+1 (n + 1)3 n=1
∞ X 42. (−1)n−1
∞ X (−1)n (4/3)n 43. n4 n=1
∞ X (−4)n 44. (n!)n n=1
45.
∞ X n=1
47.
n (−3) (2n)! n
∞ X
(−1)
∞ X
(−1)n (n!)2
∞ X
n+1 n−1 5 (−1) 24n
2 n n (n!) 2
(2n)!
n=1
49.
n=1
51.
n=1
53.
∞ X
n+1 (n
+ 2) n5/4
(−1)
n=1
55.
∞ X
(−1)
∞ X
(−1)n
∞ X
n! (−1) p , 0 < p < 1 n
∞ X
n! (−1) p , 1 < p n
n (3n
n=1
57.
n=2
59.
n=1
61.
4n (2n)!
n=1
2
+ 2n − 1) 2n3
(ln n) n
n
n
3 n 2 n2
n=1
46.
∞ X
(−1)n
∞ X
(−1)n+1
∞ X
(−1)n
∞ X
(−1)n+1
∞ X
(−1)n
n=1
48.
(n + 1)! 1 · 3 · 5 · · · (2n + 1)
n=1
50.
n=1
52.
2 · 4 · · · (2n + 2) 1 · 4 · 7 · · · (3n + 1)
n=1
54.
n=1
(n − 1) n3/2
(n + 1) (n + 3)
(n + 2) n7/4
∞ X (−1)n 56. n(ln n) n=2
58.
∞ X
(−1)n+1
n=1
60.
∞ X
(−1)
∞ X
(−1)n
nn
n=1
62.
n=1
(ln n) n2
p
n!
,0 < p < 1
np ,1 < p n!
8.5. ALTERNATING SERIES
341
63. Suppose that 0 < ak for each natural number k and Prove that
∞ X
∞ X
ak converges.
k=1
apk converges for every p > 1.
k=1
64. Suppose that 0 < ak for each natural number k and Prove that
∞ X
∞ X
ak diverges.
k=1
apk , for 0 < p < 1.
k=1
65. Suppose that 0 < r < 1 and |ak+1 /ak | < r for all k ≥ N . Prove that ∞ X ak converges absolutely. k=1
∞ X an converges absolutely if 0 < a < b. 66. Prove that (−1)n n 3 + b k=1
8.5
Alternating Series
Definition 8.5.1 SupposePthat for each natural number n, bn is positive or negative. Then the series ∞ k=1 bk is said to converge (a) absolutely if the series
P∞
k=1
(b) conditionally if the series
|bk | converges;
P∞
k=1 bk
converges but
P∞
k=1
|bk | diverges.
Theorem 8.5.1 If a series converges absolutely, then it converges. Proof.
Suppose that
∞ X
|bk | converges. For each natural number k, let
k=1
ak = bk + |bk | and ck = 2|bk |. Then 0 ≤ ak ≤ ck for each k. Since ∞ X k=1
ck =
∞ X k=1
2|bk | = 2
∞ X k=1
|bk |,
342
CHAPTER 8. INFINITE SERIES
the series
∞ X
ck converges. by the comparison test
k=1
∞ X
ak also converges. It
k=0
follows that ∞ X k=1
∞ X bk = (ak − |bk |)
=
k=1 ∞ X
ak −
k=1
and the series
∞ X
∞ X
|bk |
k=1
bk converges. This completes the proof of the theorem.
k=1
Definition 8.5.2 Suppose that for each natural number n, an > 0. Then an alternating series is a series that has one of the following two forms: (a) a1 − a2 + a3 − · · · + (−1)n+1 an + · · · =
n X (−1)k+1 ak k=1
(b) −a1 + a2 − a3 + · · · + (−1)n an + · · · =
∞ X (−1)k ak . k=1
Theorem 8.5.2 Suppose that 0 < an+1 < an for all natural numbers m, and lim an = 0. Then
n→∞
∞ ∞ X X n (a) (−1) an and (−1)n+1 an both converge. n=1
n=1
∞
n
X
X
(b) (−1)k+1 an − (−1)k+1 an < an+1 , for all n;
k=1
k=1
∞
∞
X
X
k k (c) (−1) ak − (−1) ak < an+1 , or all n.
k=1
Proof.
k=1
8.5. ALTERNATING SERIES
343
Part (a) For each natural number n, let sn =
n X (−1)k+1 ak . Then, k=1
s2n+2 − s2n =
2n+2 X
(−1)k+1 ak −
k=1
2n X (−1)k+1 ak k=1
2n+3
= (−1) a2n+2 + (−1)2n+2 a2n+1 = a2n+1 − a2n+2 > 0. Therefore, s2n+2 > s2n and {s2n }∞ n=1 is an increasing sequence. Similarly, s2n+3 − s2n+1 = (−1)2n+4 a2n+3 − (−1)2n+2 a2n+1 = a2n+3 − a2n+1 < 0. Therefore, s2n+3 < s2n+1 and {s2n+1 }∞ n=0 is a decreasing sequence. Furthermore, s2n = a1 − a2 + a3 − a4 + · · · + (−1)2n+1 a2n = a1 − (a2 − a3 ) − (a4 − a5 ) − · · · − (a2n−2 − a2n−1 ) − a2n < a1 . Thus, {s2n }∞ n=1 is an increasing sequence which is bounded above by a1 . Therefore, {s2n }∞ n=1 converges to some number s ≤ a1 . Then lim s2n+1 = lim s2n + lim a2n+1
n→∞
n→∞
n→∞
= lim s2n n→∞
= s. It follows that lim sn = s
n→∞
∞ ∞ X X n+1 and the series (−1) ak converges to s and the series (−1)n ak con-
verges to −s.
n=1
n=1
Part (b) In the proof of Part (a) we showed that s2n < s < s2n+1 < s2n−1 . . . for each natural number n. It follows that 0 < s − s2n < s2n+1 − s2n = a2n+1
(1)
344
CHAPTER 8. INFINITE SERIES
and
∞
2n
X
X
(−1)k+1 ak < a2n+1 .
(−1)k+1 ak −
k=1
Similarly,
k=1
s2n − s2n−1 < s − s2n−1 s2n−1 − s2n > s2n−1 − s s − s2n−1 < s2n−1 − s2n = a2n
∞
2n−1
X
X
(−1)k+1 ak < a2n .
(−1)k+1 ak −
k=1
k=1
It follows that for all natural numbers n,
∞
n
X
X
k+1 k+1
(−1) ak < an+1 .
(−1) ak −
k=1
k=1
∞
n
X
X
k k Part (c) (−1) ak − (−1) ak
k=1
k=1
(∞ )
n
X X
k+1 k+1 = (−1) (−1) ak − (−1) ak
k=1 k=1
∞
n
X
X
k+1 = (−1) ak − (−1)k+1 ak < a2n+1 .
k=1
k=1
This concludes the proof of this theorem. P Theorem 8.5.3 Consider a series ∞ k=1 ak . Let
an+1
= L , lim |an |1/n = M lim
n→∞ an
n→∞ (a) If L < 1, then the series
P∞
ak converges absolutely.
(b) If L > 1, then the series
P∞
ak does not converge absolutely.
k=1
(c) If M < 1, then the series
k=1
P∞
k=1
ak converges absolutely.
8.5. ALTERNATING SERIES
345
P∞
ak does not converge absolutely. P (e) If L = 1 or M = 1, then the series ∞ k=1 ak may or may not converge absolutely.
(d) If M > 1, then the series
k=1
Proof. Suppose that for a series
∞ X
ak ,
k=1
an+1
= L and lim
n→∞ an
Part (a) If L < 1, then the series
∞ X
lim |an |1/n = M.
n→∞
|ak | converges to the ratio test, since
k=1
an+1
|an+1 |
= L < 1. lim = lim
n→∞ |an | n→∞ an
Hence, the series
∞ X
ak converges absolutely.
k=1
Part (b) As in Part (a), the series
∞ X
|ak | diverges by the ratio test if L > 1,
k=1
since
an+1
|an+1 |
= L > 1. = lim
lim n→∞ n→∞ |an | an
∞ X Part (c) If M < 1, then the series |ak | converges by the root test, since k=1
lim |ak |1/n = M < 1.
n→∞
Part (d) If M > 1, then the series
∞ X
|ak | diverges by the root test as in
k=1
Part (c). ∞ ∞ ∞ X X X 1 1 1 and , L = M = 1, but diverges Part (e) For the series 2 k k k k=1 k=1 k=1 ∞ X 1 and converges by the p-series test. Thus, L = 1 and M = 1 fail to k2 k=1 determine convergence or divergence.
346
CHAPTER 8. INFINITE SERIES
This completes the proof of Theorem 8.5.3.
Exercises 8.3 Determine the region of convergence of the following series. 71.
∞ X (−1)n xn
72.
∞ X (−1)n (x − 1)n
74.
2n
n=1
73.
n=1
n!
n=1
∞ X 75. (−2)n xn
76.
81.
∞ X (n + 1)!(x − 1)n
82.
∞ X
2
n
n (x + 1)
84.
85.
n=1
3n (2n)!
∞ X (−1)n (x + 1)n 87. (n + 1) ln(n + 1) n=1
89.
∞ X (−1)n (ln n)3n xn n=1
4n n2
86.
∞ X
(−1)n n!(x − 1)n 1 · 3 · · · 5 · · · (2n + 1)
23n
∞ X ln(n + 1)2n (x + 1)n n=1
90.
n!
∞ X (−1)n 3n xn n=1
88.
(2n)!
∞ X (−1)n (2n)!xn
n=1
∞ X (−1)n (n!)2 (x − 1)n
n3/2
∞ X (−1)n xn
n=1
n=1
2n n2
∞ X (−1)n (x − 3)n
n=1
4n
5n
∞ X (x + 2)n
n=1
80.
n!
n=1
83.
78.
∞ X (2x)n n=1
∞ X (−1)n n!(x − 1)n
n=1
∞ X (x + 1)n 77. (−1)n n 3 3 n n=1
3n n2
n=1
n=0
79.
∞ X (−1)n (x + 2)n
n+2
∞ X (−1)n 1 · 3 · 5 · · · (2n + 1) n=1
2 · 4 · 6 · · · (2n + 2)
xn
8.6. POWER SERIES
8.6
347
Power Series
Definition If a0 , a1 , a2 , . . . is a sequence of real numbers, then the Pâ&#x2C6;&#x17E; 8.6.1 k series k=1 ak x is called a power series in x. A positive number r is called the radius of convergence and the interval (â&#x2C6;&#x2019;r, r) is called the interval of convergence of the power series if the power series converges absolutely for all x in (â&#x2C6;&#x2019;r, r) and diverges for all x suchP that |x| > r. The end point x = r is k end point included in the interval of convergence if â&#x2C6;&#x17E; k=1 ak r converges. PThe â&#x2C6;&#x17E; x = â&#x2C6;&#x2019;r is included in the interval of convergence if the series k=1 (â&#x2C6;&#x2019;1)k ak rk converges. If the power series converges only for x = 0, then the radius of convergence is defined to be zero. If the power series converges absolutely for all real x, then the radius of convergence is defined to be â&#x2C6;&#x17E;. Theorem 8.6.1 If the series series
â&#x2C6;&#x17E; X
â&#x2C6;&#x17E; X
cn xn converges for x = r 6= 0, then the
n=1
cn xn converges absolutely for all numbers x such that |x| < |r|.
n=0
Proof. Suppose that
â&#x2C6;&#x17E; X
cn rn converges. Then, by the Divergence Test,
n=0
lim cn rn = 0.
nâ&#x2020;&#x2019;â&#x2C6;&#x17E;
For = 1, there exists some natural number m such that for all n â&#x2030;Ľ m, |cn rn | < = 1. Let M = max{|cn rn | + 1 : 1 â&#x2030;¤ n â&#x2030;¤ m}. Then, for each x such that |x| < |r|, we get |x/r| < 1 and â&#x2C6;&#x17E; X n=0
â&#x2C6;&#x17E; X
x n
|cn rn | ¡
r n=0 â&#x2C6;&#x17E;
x n X
â&#x2030;¤ M
r n=0
|cn xn | =
=
M
< â&#x2C6;&#x17E;. 1 â&#x2C6;&#x2019; xr
348
CHAPTER 8. INFINITE SERIES
By the comparison test the series
∞ X
|cn xn | converges for x such that |x| <
n=0
|r|. This completes the proof of Theorem 8.6.1. Theorem 8.6.2 If the series r 6= 0, then the series
∞ X
∞ X
cn (x − a)n converges for some x − a =
n=0
cn (x − a)n converges absolutely for all x such that
n=0
|x − a| < |r|. ∞ X
Proof. Let x−a = u. Suppose that by Theorem 8.6.1, the series
∞ X
cn un converges for some u = r. Then
n=0
cn un converges absolutely for all u such that
n=0
|u| < |r|. It follows that the series
∞ X
cn (x − a)n converges absolutely for all
n=0
x such that |x − a| < |r|. This completes the proof of the theorem. Theorem 8.6.3 Let
∞ X
cn xn be any power series. Then exactly one of the
n=0
following three cases is true. (i) The series converges only for x = 0. (ii) The series converges for all x. (iii) There exists a number R such that the series converges for all x with |x| < R and diverges for all x with |x| > R. Proof.
Suppose that cases (i) and (ii) are false. Then there exist two ∞ ∞ X X n nonzero numbers p and q such that cn p converges and cn q n diverges. n=0
n=0
By Theorem 8.6.1, the series converges absolutely for all x such that |x| < |p|. Let ∞ X A = {p : cn pn converges}. n=0
8.6. POWER SERIES
349
The set A is bounded from above by q. Hence A has a least upper bound, say R. Clearly |p| ≤ R < q and hence R is a positive real number. Furthermore, ∞ X cn xn converges for all x such that |x| < R and diverges for all x such that n=0
|x| > R. We define R to be 0 for case (i) and R to be ∞ for case (ii). This completes the proof of Theorem 8.6.3. Theorem 8.6.4 Let
∞ X
cn (x − a)n be any power series. Then exactly one
n=0
of the following three cases is true: (i) The series converges only for x = a and the radius of convergence is 0. (ii) The series converges for all x and the radius of convergence is ∞. (iii) There exists a number R such that the series converges for all x such that |x − a| < R and diverges for all x such that |x − a| > R. Proof.
Let u = x − a and use Theorem 8.6.3 on the series
∞ X
cn un . The
n=0
details of the proof are left as an exercise. Theorem 8.6.5 If R > 0 and the series the series
∞ X
∞ X
cn rn converges for |x| < R, then
n=0
ncn x
n−1
, obtained by term-by-term differentiation of
n=1
∞ X
c n xn ,
n=0
converges absolutely for |x| < R. Proof. For each x such that |x| < R, choose a number r such that |x| < r < ∞ X R. Then cn xn converges, lim cn rn = 0 and hence {cn rn }∞ n=0 is bounded. n→∞
n=0
There exists some M such that |cn rn | ≤ M for each natural number n. Then ∞ X n=1
|ncn x
n−1
∞ X
1
x
n−1 |= n|cn r | · ·
r r n=1 ∞ M X
x
n−1 ≤ . n
r n=1 r n
350
CHAPTER 8. INFINITE SERIES
The series that
∞ X
∞
x
x n−1 X
converges by the ratio test, since < 1. It follows n
r r n=1
ncn xn−1 converges absolutely for all x such that |x| < R. This
n=1
completes the proof of this theorem.
Theorem 8.6.6 If R > 0 and the series such that |x−a| < R, then the series
∞ X
∞ X
cn (x − a)n converges for all x
n=0
cn (x−a)n may be differentiated with
n=0
respect to x any number of times and each of the differential series converges for all x such that |x − a| < R. Proof. Let u = x−a. Then
∞ X
cn un converges for all u such that |u| < R. By
n=0
Theorem 8.6.5, the series
∞ X
ncn un−1 converges for all u such that |u| < R.
n=1
This term-by-term differentiation process may be repeated any number of times without changing the radius of convergence. This completes the proof of this theorem. P∞ n Theorem 8.6.7 Suppose that R > 0 and f (x) = n=0 cn x and R is radius P∞ of convergence of the series n=0 cn xn . Then f (x) is continuous for all x such that |x| < R. Proof. For each number c such that −R < c < R, we have
∞
n
n
f (x) − f (c)
X x −c
cn
x − c =
x−c
n=0
∞
X
n−1
=
cn nan
n=1
∞ X
≤ n cn an−1 n n=1
8.6. POWER SERIES
351
for some an between c and x, for each natural number n, by the Mean Value ∞ X Theorem. By Theorem 8.6.6, the series n |cn an |n−1 converges. Hence, n=1
(
∞ X
lim |f (x) − f (c)| = lim |x − c| |c0 − c| + n cn an−1 n
x→c
x→c
=0·
)
n=1
(
|c0 − c| +
∞ X n=1
n cn an−1 n
)
= 0.
Hence, f (x) is continuous at each number c such that −R < c < R. This completes the proof of this theorem.
Theorem 8.6.8 Suppose that R > 0, f (x) = of convergence of the series
∞ X
∞ X
cn xn and R is the radius
n=0
cn xn . For each x such that |x| < R, we define
n=0
F (x) =
x
Z
f (t)dt. 0
Then, for each x such that |x| < R, we get
F (x) =
∞ X n=0
cn
xn+1 . n+1
352
CHAPTER 8. INFINITE SERIES
Proof. Suppose that |x| < |r| < R. Then
Z
Z x
m m
x n+1
X X x
f (t)dt − tn
cn lim F (x) − cn
= lim
n→∞ m→∞
0 n + 1
0 n=0 n=0
Z ( ) m
x X
n f (t) − cn t dt
= lim
m→∞ 0
Z ( ∞ n=0 )
x X
n cn t dt
= lim
m→∞ 0
n=m+1 ) Z x( X ∞ n |cn t | dt ≤ lim m→∞
≤ lim
m→∞
0
n=m+1
x
Z 0
(
m→∞
n=m+1
= 0 · |x| = 0, since
∞ X
)
|cn rn | dt
n=m+1 ∞ X
≤ lim
∞ X
! Z
|cn rn |
x 0
1 dt
|cn rn | converges.
n=0
It follows that x
Z
f (t)dt = 0
∞ X
x
Z 0
=
!
cn tn dt
n=0
∞ X
cn
n=0
xn+1 . n+1
This completes the proof of the this theorem. Theorem 8.6.9 Suppose that f (x) =
∞ X
cn xn for all |x| < R, where R > 0
n=0 ∞ X
is the radius of convergence of the series
n=0
cn xn . Then f (x) has continuous
8.6. POWER SERIES
353
derivatives of all orders for |x| < R that are obtained by successive term-by∞ X term differentiations of c n xn . n=0
Proof. For each |x| < R, we define g(x) =
∞ X
ncn xn−1 .
n=1
Then, by Theorem 8.6.5, R is the radius of convergence of the series
∞ X
ncn xn−1 .
n=1
By Theorem 8.6.7, g(x) is continuous. Hence, c0 +
x
Z
g(x)dx = c0 + 0
∞ X
cn xn = f (x).
n=1
By the fundamental theorem of calculus, f 0 (x) = g(x). This completes the proof of this theorem. Definition 8.6.2 The radius of convergence of the power series ∞ X
ak (x − a)k
k=1
is (a) zero, if the series converges only for x = a; (b) r, if the series converges absolutely for all x such that |x − a| < r and diverges for all x such that |x − a| > r. (c) ∞, if the series converges absolutely for all real number x. If the radius of convergence of the power series in (x − a) is r, 0 < r < ∞, then the interval of convergence of the series is (a − r, a + r). The end points x = a + r or x = aP − r are included of convergence if the P∞ in thek interval ∞ k k corresponding series k=1 ak r or k=1 (−1) ak r converges, respectively. If r = ∞, then the interval of convergence is (−∞, ∞).
354
CHAPTER 8. INFINITE SERIES
Exercises 8.4 In problem 1–12, determine the Taylor series expansion for each function f about the given value of a. 1. f (x) = e−2x , a = 0
2. f (x) = cos(3x), a = 0
3. f (x) = ln(x), a = 1
4. f (x) = (1 + x)−2 , a = 0
5. f (x) = (1 + x)−3/2 , a = 0
6. f (x) = ex , a = 2
7. f (x) = sin x, a =
π 6
8. f (x) = cos x, a =
π 3 1 11. f (x) = sin x − ,a = 0 2
10. f (x) = x1/3 , a = 8
9. f (x) = sin x, a =
In problems 13-20, determine
n X
1 12. f (x) = cos x − ,a = 0 2 f (k) (a)
k=0
x2
13. f (x) = e , a = 0, n = 3 15. f (x) =
π 4
1 , a = 0, n = 2 1 − x2
(x − a)k . k!
14. f (x) = x2 e−x , a = 0, n = 3 16. f (x) = arctan x, a = 0, n = 3
17. f (x) = e2x cos 3x, a = 0, n = 4
18. f (x) = arcsin x, a = 0, n = 3
19. f (x) = tan x, a = 0, n = 3
20. f (x) = (1 + x)1/2 , a = 0, n = 5
8.7
Taylor Polynomials and Series
Theorem 8.7.1 (Taylor’s Theorem) Suppose that f, f 0 , · · · , f (n+1) are all continuous for all x such that |x − a| < R. Then there exists some c between a and x such that f (x) = Pn (x) + Rn (x) where Pn (x) =
n X k=0
f (k) (a)
(x − a)n+1 (x − a)k , Rn (x) = f (n+1) (c) . k! (n + 1)!
8.7. TAYLOR POLYNOMIALS AND SERIES
355
The polynomial Pn (x) is called the nth degree Taylor polynomial approximation of f . The term Rn (x) is called the Lagrange form of the remainder. Proof. We define a function g of a variable z such that f 0 (z)(x − z) f 00 (z)(x − z)2 − − ··· 1! 2! f (n) (z)(x − z)n (x − z)n+1 − − Rn (x) . n! (x − a)n+1
g(z) = [f (x) − f (z)] −
Then g(a) = f (x) −
( n X f (k) (a) k=0
k!
)
(x − a)k + Rn (x)
= 0,
and g(x) = f (x) − f (x) = 0. By the Mean Value Theorem for derivatives there exists some c between a and x such that g 0 (c) = 0. But f 000 (z)(x − z)2 0 0 0 00 00 − ··· g (z) = −f (z) − [−f (z) + f (z)(x − z)] − −f (z)(x − z) + 2! n f (z)(x − z)n−1 f (n+1) (z)(x − z)n (n + 1)(x − z)n − − + + Rn (x) n! n! (x − a)n+1 (n + 1)(x − z)n (x − z)n = −f (n+1) (z) + Rn (x) n! (x − a)n+1 (x − c)n (n + 1)(x − c)n g 0 (c) = 0 = −f (n+1) (c) + Rn (x) . n! (x − a)n+1 Therefore, Rn (x) =
(x − a)n+1 f (n+1) (c) (x − a)n+1 · = f (n+1) (c) n+1 n! (n + 1)!
as required. This completes the proof of this theorem. Theorem 8.7.2 (Binomial Series) If m is a real number and |x| < 1, then m
(1 + x) = 1 +
∞ X m(m − 1) · · · (m − k + 1) k=1
= 1 + mx +
k!
xk
m(m − 1) 2 m(m − 1)(m − 2) 3 x + x + ··· . 2! 3!
356
CHAPTER 8. INFINITE SERIES
This series is called the binomial series. If we use the notation m m(m − 1) · · · (m − k + 1) = k k! m then is called the binomial coefficient and k ∞ X m k m (1 + x) = 1 + x . k k=1 If m is a natural number, then we get the binomial expansion m X m k m (1 + x) = 1 + x . k k=1 Proof. Let f (x) = (1 + x)m . Then for all natural numbers n, f 0 (x) = m(1 + x)m−1 , f 00 (x) = m(m − 1)(1 + x)m−2 , · · · , f (n) (x) = m(m − 1) · · · (m − n + 1)(1 + x)m−n . Thus, f (n) (0) = m(m − 1) · · · (m − n + 1), and f (x) =
∞ X m(m − 1)(m − 2) · · · (m − n + 1) n=0
n!
xn
∞ X m n = x n n=0 m m where = 1 and = m(m − 1) · · · (m − n + 1) is called the nth 0 n binomial coefficient. By the ratio test we get
m(m − 1) · · · (m − n)xn+1 n!
· lim
n→∞ (n + 1)! m(m − 1) · · · (m − n + 1)xn
m − n
= |x| lim n→∞ n+1
m
− 1 n
= |x|
lim 1
n→∞ 1 + n
= |x|,
8.7. TAYLOR POLYNOMIALS AND SERIES
357
and, hence, the series converges for |x| < 1. This completes the proof of the theorem. Theorem 8.7.3 The following power series expansions of functions are valid. −1
1. (1 − x)
=1+
∞ X
x
k
−1
and (1 + x)
k=1
∞ X =1+ (−1)k xk , |x| < 1. k=1
∞ ∞ X X xk xk −x , e =1+ , |x| < ∞. (−1)k 2. e = 1 + k! k! k=1 k=1 x
∞ X 3. sin x = (−1)k k=0
x2k+1 , |x| < ∞. (2k + 1)!
∞ X x2k 4. cos x = , |x| < ∞. (−1)k (2k)! k=0
5. sinh x =
∞ X k=0
6. cosh x =
x2k−1 , |x| < ∞. (2k + 1)!
∞ X x2k , |x| < ∞. (2k)! k=0
∞ X xk+1 7. ln(1 + x) = , −1 < x ≤ 1. (−1)k k+1 k=0
8.
1 ln 2
1+x 1−x
∞ X x2k+1 = , −1 < x < 1. 2k + 1 k=0
∞ X x2k+1 9. arctan x = , −1 ≤ x ≤ 1. (−1)k 2k + 1 k=0
∞ X −1/2 x2k+1 10. arcsin x = , |x| ≤ 1. (−1)k 2k + 1 k k=0
358
CHAPTER 8. INFINITE SERIES
Proof. Part 1. By the geometric series expansion, for all |x| < 1, we have ∞ X 1 =1+ xk 1−x k=1
∞ X 1 1 = =1+ (−1)k xk . 1+x 1 − (−x) k=1
and
Part 2. If f (x) = ex , then f (n) (x) = ex and f (n) (0) = 1 for each n = 0, 1, 2, · · · . Thus ∞ X xn . ex = n! n=0 By the ratio test the series converges for all x.
n+1
x n! 1 · n
= |x| lim = 0. lim
n→∞ n + 1 n→∞ (n + 1)! x
Part 3. Let f (x) = sin x. Then f 0 (x) = cos x, f 00 (x) = − sin x, f (3) (x) = − cos x and f (4) (x) = sin x. It follows that, for each n = 0, 1, 2, 3, · · · , we have f (4n) (0) = 0, f (4n+1) (0) = 1, f (4n+2) (0) = 0 and f (4n+3) (0) = −1. Hence, x3 x5 + − ··· 3! 5! ∞ X x2n+1 = . (−1)n (2n + 1)! n=0
sin x = x −
By the ratio test, the series converges for all |x| < ∞:
2n+3
x (2n + 1)!
lim
(−1)n+1 n→∞ (2n + 3)! x2n+1
1 = x2 lim n→∞ (2n + 3)(2n + 2) = 0. Part 4. By term-by-term differentiation we get ∞ X x2n , |x| < ∞. cos x = (sin x) = (−1)n (2n)! n=0 0
8.7. TAYLOR POLYNOMIALS AND SERIES Part 5. For all |x| < ∞, we get 1 x (e − e−x ) 2 ! ∞ ∞ n 1 X xn X x = − (−1)n 2 n=0 n! n=0 n!
sinh x =
=
∞ X n=0
x2n+1 . (2n + 1)!
Part 6. By differentiating term-by-term, we get ∞ X x2n cosh x = (sinh x) = , l |x| < ∞. (2n)! n=0 0
Part 7. For each |x| < 1, by performing term by integration, we get Z x 1 ln(1 + x) = dx 0 1+x ! Z ∞ X ∞ = (−1)n xn dx 0
=
n=0
∞ X
(−1)n
n=0
xn+1 . n+1
Part 8. By Part 7, for all |x| < 1, we get 1+x 1 1 ln = [ln(1 + x) − ln(1 − x)] 2 1−x 2 "∞ # ∞ n+1 n+1 X 1 X x (−x) − = (−1)n (−1)n 2 n=0 n + 1 n=0 n+1 # "∞ 1 X (−1)n = (1 − (−1)n+1 )xn+1 2 n=0 n + 1 ∞ X x2k+1 = . 2k + 1 k=0
1 Recall that arctanh x = ln 2
1+x . 1−x
359
360
CHAPTER 8. INFINITE SERIES
Part 9. For each |x| ≤ 1, we perform term-by-term integration to get Z x 1 arctan x = dx 2 0 1+x ! Z x X ∞ = (−1)k x2k dx 0
=
k=0
∞ X
(−1)k
k=0
x2k+1 . (2k + 1)
Part 10. By performing term-by-term integration of the binomial series, we get Z x 1 √ dx arcsin x = 2 1 − x 0 Z x = (1 − x2 )−1/2 dx 0 ! Z x X ∞ −1/2 2 k = (−x ) dx k 0 k=0 ∞ X −1/2 x2k+1 = (−1)k . k (2k + 1) k=0 This series converges for all |x| ≤ 1. This completes the proof of this theorem.
8.8
Applications
Chapter 9 Analytic Geometry and Polar Coordinates A double right-circular cone is obtained by rotating a line about a fixed axis such that the line intersects the axis and makes the same angle with the axis. The intersection point of the line and the axis is called a vertex. A conic section is the intersection of a plane and the double cone. Some of the important conic sections are the following: parabola, circle, ellipse and a hyperbola.
9.1
Parabola
Definition 9.1.1 A parabola is the set of all points in the plane that are equidistant from a given point, called the focus, and a given line called the directrix. A line that passes through the focus and is perpendicular to the directrix is called the axis of the parabola. The intersection of the axis with the parabola is called the vertex.
Theorem 9.1.1 Suppose that v(h, k) is the vertex and the line x = h − p is the directrix of a parabola. Then the focus is F (h + p, k) and the axis is the horizontal line with equation y = k. The equation of the parabola is (y − k)2 = 4p(x − h).
361
362CHAPTER 9. ANALYTIC GEOMETRY AND POLAR COORDINATES Theorem 9.1.2 Suppose that v(h, k) is the vertex and the line y = k − p is the directrix of a parabola. Then the focus is F (h, k + p) and the axis is the vertical line with equation x = h. The equation of the parabola is (x − h)2 = 4p(y − k).
9.2
Ellipse
Definition 9.2.1 An ellipse is the locus of all points, the sum of whose distances from two fixed points, called foci, is a fixed positive constant that is greater than the distance between the foci. The midpoint of the line segment joining the two foci is called the center. The line segment through the foci and with end points on the ellipse is called the major axis. The line segment, through the center, that has end points on the ellipse and is perpendicular to the major axis is called the minor axis. The intersections of the major and minor axes with the ellipse are called the vertices. Theorem 9.2.1 Let an ellipse have center at (h, k), foci at (h ± c, k), ends of the major axis at (h ± a, k) and ends of the minor axis at (h, k ± b), where a > 0, b > 0, c > 0 and a2 = b2 + c2 . Then the equation of the ellipse is (x − h)2 (y − k)2 + = 1. a2 b2 The length of the major axis is 2a and the length of the minor axis is 2b. Theorem 9.2.2 Let an ellipse have center at (h, k), foci at (h, k ± c), ends of the major axis at (h, k ± a), and the ends of the minor axis at (h ± b, k), where a > 0, b > 0, c > 0 and a2 = b2 + c2 . Then the equation of the ellipse is (y − k)2 (x − h)2 + = 1. a2 b2 The length of the major axis is 2a and the length of the minor axis is 2b. Remark 24 If c = 0, then a = b, foci coincide with the center and the ellipse reduces to a circle.
9.3. HYPERBOLA
9.3
363
Hyperbola
Definition 9.3.1 A hyperbola is the locus of all points, the difference of whose distances from two fixed points, called foci, is a fixed positive constant that is less than the distance between the foci. The mid point of the line segment joining the two foci is called the center. The line segment, through the foci, and with end points on the hyperbola is called the major axis. The end points of the major axis are called the vertices. Theorem 9.3.1 Let a hyperbola have centerâ&#x2C6;&#x161; at (h, k), foci at (h Âą c, k), vertices at (h Âą a, k), where 0 < a < c, b = c2 â&#x2C6;&#x2019; a2 , then the equation of the hyperbola is (x â&#x2C6;&#x2019; h)2 (y â&#x2C6;&#x2019; k)2 â&#x2C6;&#x2019; = 1. a2 b2 Theorem 9.3.2 Let a hyperbola have centerâ&#x2C6;&#x161; at (h, k), foci at (h, k Âą c), vertices at (h, k Âą a), where 0 < a < c, b = c2 â&#x2C6;&#x2019; a2 , then the equation of the hyperbola is (y â&#x2C6;&#x2019; k)2 (x â&#x2C6;&#x2019; h)2 â&#x2C6;&#x2019; = 1. a2 b2
9.4
Second-Degree Equations
Definition 9.4.1 The transformations x = x0 cos θ â&#x2C6;&#x2019; y 0 sin θ y = x0 sin θ + y 0 cos θ and
x0 = x cos θ + y sin θ y 0 = â&#x2C6;&#x2019;x sin θ + y cos θ
are called rotations. The point P (x, y) has coordinates (x0 , y 0 ) in an x0 y 0 coordinate system obtained by rotating the xy-coordinate system by an angle θ. Theorem 9.4.1 Consider the equation ax2 + bxy + cy 2 + dx + ey + f = 0, b 6= 0. Let cot 2θ = (a â&#x2C6;&#x2019; c)/b and x0 y 0 -coordinate system be obtained
364CHAPTER 9. ANALYTIC GEOMETRY AND POLAR COORDINATES through rotating the xy-coordinate system through the angle θ. Then the given second degree equation ax2 + bxy + cy 2 + dx + ey + f = 0 becomes
0
0
a0 x 2 + c0 y 2 + d0 x + e0 y + f 0 = 0 where a0 c0 d0 e0 f0
= a cos2 θ + b cos θ sin θ + c sin2 θ = a sin2 θ − b sin θ cos θ + c cos2 θ = d cos θ + e sin θ = −d sin θ + e cos θ =f
Furthermore, the given second degree equation represents (i) an ellipse, a circle, a point or no graph if b2 − 4ac < 0; (ii) a hyperbolic or a pair of intersecting lines if b2 − 4ac > 0; (iii) a parabola, a line, a pair of parallel lines, or else no graph if b2 −4ac = 0.
9.5
Polar Coordinates
Definition 9.5.1 Each point P (x, y) in the xy-coordinate plane is assigned the polar coordinates (r, θ) that satisfy the following relations: x2 + y 2 = r2 , y = r cos θ, y = r sin θ. The origin is called the pole and the positive x-axis is called the polar axis. The number r is called the radial coordinate and the angle θ is called the angular coordinates. The polar coordinates of a point are not unique as the rectangular coordinates are. In particular, (r, θ) ≡ (r, θ + 2nπ) ≡ (−r, θ + (2m + 1)π) where n and m are any integers. There does exist a unique polar representation (r, θ) if r ≥ 0 and 0 ≤ θ < 2π.
9.6. GRAPHS IN POLAR COORDINATES
9.6
365
Graphs in Polar Coordinates
Theorem 9.6.1 A curve in polar coordinates is symmetric about the (a) x-axis if (r, θ) and (r, −θ) both lie on the curve; (b) y-axis if (r, θ) and (r, π − θ) both lie on the curve; (c) origin if (r, θ), (r, θ + π) and (−r, θ) all lie on the curve. Theorem 9.6.2 Let e be a positive number. Let a fixed point F be called the focus and a fixed line, not passing through the focus, be called a directrix. If P is a point in the plane, let P F stand for the distance between P and the focus F and let P D stand for the distance between P and the directrix. Then the locus of all points P such that P F = eP D is a conic section representing (a) an ellipse if 0 < e < 1; (b) a parabola if e = 1; (c) a hyperbola if e > 1; The number e is called the eccentricity of the conic. In particular an equation of the form r=
ek 1 ± e cos θ
represents a conic with eccentricity e, a focus at the pole (origin), and a directrix perpendicular to the polar axis and k units to the right of the pole, in the case of + sign, and k units to the left of the pole, in the case of − sign. Also, an equation of the form r=
ek 1 ± e sin θ
represents a conic with eccentricity e, a focus at the pole, and a directrix parallel to the polar axis and k units above the pole, in the case of + sign, and k units below the pole, in the case of − sign.
366CHAPTER 9. ANALYTIC GEOMETRY AND POLAR COORDINATES
9.7
Areas in Polar Coordinates
Theorem 9.7.1 Let r = f (θ) be a curve in polar coordinates such that f is continuous and nonnegative for all α ≤ θ ≤ β where α ≤ β ≤ 2π + α. Then the area A bounded by the curves r = f (θ), θ = α and θ = β is given by Z β Z β 1 2 1 A= r dθ = (f (θ))2 dθ. 2 2 α α Theorem 9.7.2 Let r = f (θ) be a curve in polar coordinates such that f and f 0 are continuous for α ≤ θ ≤ β, and there is no overlapping, the arc length L of the curve from θ = α to θ = β is given by Z βp (f (θ))2 + (f 0 (θ))2 dθ L= α s 2 Z β dr = r2 + dθ dθ α
9.8
Parametric Equations
Definition 9.8.1 A parametrized curve C in the xy-plane has the form C = {(x, y) : x = f (t), y = g(t), t ∈ I} for some interval I, finite or infinite. The functions f and g are called the coordinate functions and the variable t is called the parameter. Theorem 9.8.1 Suppose that x = f (t), y = g(t) are the parametric equations of a curve C. If f 0 (t) and g 0 (t) both exist and f 0 (t) 6= 0, then dy g 0 (t) = 0 . dx f (t) Also, if f 00 (t) and g 00 (t) exist, then d2 y f 0 (g)g 00 (t) − g 0 (t)f 00 (t) = . dx2 (f 0 (t))2 At a point P0 (f (t0 ), g(t0 )), the equation of
9.8. PARAMETRIC EQUATIONS
367
(a) the tangent line is y − g(t0 ) =
g 0 (t0 ) (x − f (t0 )) f 0 (t0 )
(b) the normal line is y − g(t0 ) = −
f 0 (t0 ) (x − f (t0 )) g 0 (t0 )
provided g 0 (t0 ) 6= 0 and f 0 (t0 ) 6= 0. Theorem 9.8.2 Let C = {(x, y) : x = f (t), y = g(t), a ≤ t ≤ b} where f 0 (t) and g 0 (t) are continuous on [a, b]. Then the arc length L of C is given by Z b L= [(f 0 (t))2 + (g 0 (t))2 ]1/2 dt a
=
Z b " a
dx dt
2
+
dy dt
2 #1/2
dt.
Theorem 9.8.3 Let C = {(x, y) : x = f (t), y = g(t), a ≤ t ≤ b}, where f 0 (t) and g 0 (t) are continuous on [a, b]. (a) If C lies in the upper half plane or the lower half plane and there is no overlapping, then the surface area generated by revolving C around the x-axis is given by Z b p 2πg(t) (f 0 (t))2 + (g 0 (t))2 dt. a
(b) If 0 ≤ f (t) on [a, b], (or f (t) ≤ 0 on [a, b]) and there is no overlapping, then the surface area generated by revolving C around the y-axis is Z b p 2πf (t) (f 0 (t))2 + (g 0 (t))2 dt. a
368CHAPTER 9. ANALYTIC GEOMETRY AND POLAR COORDINATES Definition 9.8.2 Let C = {(x(t), y(t)) : a ≤ t ≤ b} for some interval I. Suppose that x0 (t), y 0 (t), x00 (t) and y 00 (t) are continuous on I. (a) The arc length s(t) is defined by Z t s(t) = [(x0 (t))2 + (y 0 (t))2 ]1/2 dt. a
(b) The angle of inclination, φ, of the tangent line to the curve C is defined by 0 y (t) dy φ(t) = arctan = arctan . 0 x (t) dx (c) The curvature κ(t), read kappa of t, is defined by
dφ |x0 (t)y 00 (t) − y 0 (t)x00 (t)|
= .
ds
[(x0 (t))2 + (y 0 (t))2 ]3/2 (d) The radius of curvature, R, is defined by R(t) =
1 . κ(t)